add the rest of the code.
This commit is contained in:
37
Makefile
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37
Makefile
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SHELL:=/bin/bash
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data/20200301_article_labelings.json_SUCCESS:
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./run_aql_jobs.sh
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data/20200301_article_labelings_sample.json:sample_training_labels.py
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source ./bin/activate; \
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./sample_training_labels.py
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data/article_sample.csv:sample_articles.py
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source ./bin/activate; \
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start_spark_and_run.sh 1 sample_articles.py
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data/scored_article_sample.feather:data/article_sample_set.csv ores_scores_sample.py
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source ./bin/activate; \
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python3 ores_scores_sample.py data/article_sample_set.parquet data/scored_article_sample.feather
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# run this step on kibo
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data/20200301_al_sample_revisions.w_text.json:data/20200301_article_labelings_sample.json
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source ./bin/activate; \
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python3 articlequality/utility fetch_text \
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--api-host=https://en.wikipedia.org \
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--labelings=data/20200301_article_labelings_sample.json \
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--output=data/20200301_al_sample_revisions.w_text.json \
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# run this step on kibo
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data/20200301_al_sample_revisions.w_scores.json:data/20200301_al_sample_revisions.w_text.json
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python3 score_sample_labels.py
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models/ordinal_quality.RDS:data/20200301_al_sample_revisions.w_text.json ordinal_quality_models.R
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Rscript ordinal_quality_models.R
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PHONY: data/20200301_article_labelings.json
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59
add_quality_scores.R
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59
add_quality_scores.R
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#!/usr/bin/env Rscript
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library(arrow)
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library(brms)
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library(data.table)
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library(ggplot2)
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library(parallel)
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options(mc.cores=26)
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registerDoParallel(cores=26)
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dataset <- as.data.table(read_feather("data/scored_article_sample.feather"))
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dataset <- dataset[order(articleid,time_session_end)]
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quality_model <- readRDS("models/ordinal_quality_noFa.RDS")
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posterior_coefs <- as.data.table(quality_model)
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f <- function(cols){
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post_qual <- as.matrix(posterior_coefs[,.(b_Stub, b_Start, b_C, b_B, b_GA)]) %*% as.numeric(cols)
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list(med_quality = median(post_qual),
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mean_quality = mean(post_qual),
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sd_quality = sd(post_qual)
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)
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}
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cl <- makeForkCluster(nnodes=26)
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res <- rbindlist(parApply(cl,dataset[,.(Stub,Start,C,B,GA)],1,f))
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dataset[,names(res):=res]
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f2 <- function(revscores){
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posterior_quality <- as.matrix(posterior_coefs[,.(b_Stub,b_Start,b_C,b_B,b_GA)]) %*% t(as.matrix(revscores))
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posterior_quality_diff <- apply(posterior_quality, 1, function(x) diff(x,1,1))
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posterior_quality_diff2 <- apply(posterior_quality, 1, function(x) diff(x,1,2))
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list(
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mean_quality_diff1 = c(NA,apply(posterior_quality_diff,1,mean)),
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sd_quality_diff1 = c(NA,apply(posterior_quality_diff,1,sd)),
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median_quality_diff1 = c(NA,apply(posterior_quality_diff,1,median)),
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mean_quality_diff2 = c(c(NA,NA),apply(posterior_quality_diff2,1,mean)),
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sd_quality_diff2 = c(c(NA,NA),apply(posterior_quality_diff2,1,sd)),
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median_quality_diff2 = c(c(NA,NA),apply(posterior_quality_diff2,1,median)))
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}
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dataset[,c("mean_qual_diff1","sd_qual_diff1","median_qual_diff1","mean_qual_diff2","sd_qual_diff2","median_qual_diff2"):=f2(.SD),by=.(articleid),.SDcols=c("Stub","Start","C","B","GA")]
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write_feather(dataset,'data/ordinal_scored_article_sample.feather')
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## in an earlier version I computed the full posterior of quality for the dataset, but it took too much memory.
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## Lines below checked (and confirmed) that posteriors were approximately normal.
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## we can check that the means and the medians are close as a clue that normality is a good assumptoin
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## mean(med_quality/mean_quality)
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## mean(med_quality - mean_quality)
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## mean((med_quality - mean_quality)^2)
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## ## plot some of the posteriors to check.
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## quality_post <- dataset[1:8]
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## quality_post <- melt(quality_post)
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## p <- ggplot(quality_post, aes(x=value,group=variable)) + geom_histogram(bins=50) + facet_wrap(.~variable)
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## ggsave("plots/quality_posterior_normality.pdf",device='pdf')
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167
analyze_quality_models.R
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167
analyze_quality_models.R
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library(MASS)
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library(brms)
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options(mc.cores=28)
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library(ggplot2)
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library(data.table)
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library(arrow)
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library(wCorr)
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source("RemembR/R/RemembeR.R")
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change.remember.file("ordinal.quality.analysis.RDS")
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#model.1 <- readRDS("models/ordinal_quality_intercept.RDS")
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model.main.pca <- readRDS("models/ordinal_quality_pca.RDS")
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model.main.pca.cumulative <- readRDS("models/ordinal_quality_pca.cumulative.RDS")
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model.qe6 <- readRDS("models/ordinal_quality_qe6.RDS")
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df <- readRDS("data/training_quality_labels.RDS")
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# then compare them with loo
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comparison.loo <- loo_compare(model.main.pca,model.qe6,model.main.pca.cumulative)
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#comparison.waic <- loo_compare(model.main.noC,model.main.noB,model.main.noFa,model.main.noGa,model.main.noStart,model.main.noStub,criterion='waic')
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print(comparison.loo,simplify=F,digits=2)
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remember(comparison.loo,"comparison.loo")
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# LOO Chooses NoC
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best.model <- model.main.pca.cumulative
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pca_features <- readRDS("data/ores_pca_features.RDS")
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pca_features_unweighted <- readRDS("data/ores_pca_features.noweights.RDS")
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test.df <- readRDS("data/holdout_quality_labels.RDS")
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wpca_transform <- function(wpca, x){
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x <- as.matrix(x)
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centered <- as.matrix(t(t(x) - wpca$means))
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return(centered %*% wpca$basis)
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}
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new_pca_features <- wpca_transform(pca_features, test.df[,.(Stub, Start, C, B, GA, FA)])
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test.df<-test.df[,":="(pca1 = new_pca_features[,1],
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pca2 = new_pca_features[,2],
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pca3 = new_pca_features[,3],
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pca4 = new_pca_features[,4],
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pca5 = new_pca_features[,5])]
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unweighted.pca <- wpca_transform(pca_features_unweighted, test.df[,.(Stub, Start, C, B, GA, FA)])
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test.df <- test.df[,":="(pca1.noweights = unweighted.pca[,1],
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pca2.noweights = unweighted.pca[,2],
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pca3.noweights = unweighted.pca[,3],
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pca4.noweights = unweighted.pca[,4],
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pca5.noweights = unweighted.pca[,5],
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pca6.noweights = unweighted.pca[,6])]
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draws <- as.data.table(best.model)
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test.df <- test.df[,idx.max:=.(apply(test.df[,.(Stub,Start,C,B,GA,FA)],1,which.max))]
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test.df <- test.df[,MPQC:=.(apply(test.df[,.(idx.max)],1,function(idx) c("stub","start","c","b","ga","fa")[idx]))]
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top.preds <- test.df[,MPQC]
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#ordinal.fitted.1 <- fitted(best.model, test.df, scale='response')
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ordinal.fitted <- data.table(fitted(best.model, test.df, scale='linear'))
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ordinal.pred <- ordinal.fitted$Estimate
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remember(ordinal.fitted,'ordinal.fitted')
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ordinal.quality <- ordinal.pred
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quality.even6 <- apply(test.df[,.(Stub,Start,B,C,GA,FA)],1,function(r) r %*% c(0,1,2,3,4,5))
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quality.even5 <- apply(test.df[,.(Stub,Start,B,GA,FA)],1,function(r) r %*% c(1,2,3,4,5))
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test.df <- test.df[,quality.ordinal := ordinal.quality]
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test.df <- test.df[,quality.even6 := quality.even6]
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(spearcor <- weightedCorr(test.df$quality.ordinal, test.df$quality.even6, method='spearman', weights=test.df$article_weight))
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remember(spearcor, 'spearman.corr')
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(pearsoncor <- weightedCorr(test.df$quality.ordinal, test.df$quality.even6, method='pearson', weights=test.df$article_weight))
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remember(pearsoncor, 'pearson.corr')
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ordinal.preds <- data.table(predict(best.model, test.df, robust=F))
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#names(ordinal.preds) <- c("Stub","Start","C","B","A","GA","FA")
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names(ordinal.preds) <- c("Stub","Start","C","B","GA","FA")
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ordinal.preds <- ordinal.preds[,idx.max:=.(apply(ordinal.preds[,.(Stub,Start,C,B,GA,FA)],1,which.max))]
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#ordinal.preds <- ordinal.preds[,predicted:=.(apply(ordinal.preds[,.(idx.max)],1,function(idx) c("stub","start","c","b",'a',"ga","fa")[idx]))]
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ordinal.preds <- ordinal.preds[,predicted:=.(apply(ordinal.preds[,.(idx.max)],1,function(idx) c("stub","start","c","b","ga","fa")[idx]))]
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pred.qe6 <- data.table(predict(model.qe6,test.df))
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names(pred.qe6) <- c("Stub","Start","C","B","GA","FA")
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pred.qe6 <- pred.qe6[,idx.max:=.(apply(pred.qe6[,.(Stub,Start,C,B,GA,FA)],1,which.max))]
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#pred.qe6 <- pred.qe6[,predicted:=.(apply(pred.qe6[,.(idx.max)],1,function(idx) c("stub","start","c","b",'a',"ga","fa")[idx]))]
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pred.qe6 <- pred.qe6[,predicted:=.(apply(pred.qe6[,.(idx.max)],1,function(idx) c("stub","start","c","b","ga","fa")[idx]))]
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test.df <- test.df[,ordinal.pred := ordinal.preds$predicted]
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test.df <- test.df[,pred.qe6 := pred.qe6$predicted]
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test.df <- test.df[,idx.max:=.(apply(test.df[,.(Stub,Start,C,B,GA,FA)],1,which.max))]
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test.df <- test.df[,MPQC:=.(apply(test.df[,.(idx.max)],1,function(idx) c("stub","start","c","b","ga","fa")[idx]))]
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(top.pred.accuracy <- weighted.mean(test.df[,.(MPQC)] == test.df[,.(wp10)],test.df$article_weight))
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remember(top.pred.accuracy, "top.pred.accuracy")
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(ordinal.pred.accuracy <- weighted.mean(test.df[,.(ordinal.pred)] == test.df[,.(wp10)], test.df$article_weight))
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remember(ordinal.pred.accuracy, "ordinal.pred.accuracy")
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quality.even6 <- apply(df[,.(Stub,Start,B,C,GA,FA)],1,function(r) r %*% c(1,2,3,4,5,6))
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(pred.qe6.accuracy <- weighted.mean(test.df[,.(pred.qe6)] == test.df[,.(wp10)], test.df$article_weight))
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remember(ordinal.pred.accuracy, "ordinal.pred.accuracy")
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remember(best.model, "best.model")
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remember(test.df,'test.df')
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ordinal.preds[,wp10:=test.df$wp10]
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ordinal.preds[,weight:=test.df$article_weight]
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total.weight <- sum(ordinal.preds$weight)
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library(modi)
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print("Calibration stats 1")
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calibration.stats.1 <- ordinal.preds[,.(prob.predicted=apply(.SD,2,function(c) weighted.mean(c,weight)),
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var.predicted=apply(.SD,2,function(c) weighted.var(c,weight))),.SDcols=c("Stub","Start","C","B","GA","FA")]
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calibration.stats.1[,wp10:=c("stub","start","c","b","ga","fa")]
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calip.data = ordinal.preds[order(wp10),.(prob.data=sum(weight)/total.weight,
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var.data=var(weight)/total.weight),by=.(wp10)]
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calibration.stats.1 <- calibration.stats.1[calip.data,on=.(wp10)]
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calibration.stats.1$weighttype <- 'Article weight'
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ordinal.preds[,weight:=test.df$revision_weight]
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total.weight <- sum(ordinal.preds$weight)
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print("Calibration stats 2")
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calibration.stats.2 <- ordinal.preds[,.(prob.predicted=apply(.SD,2,function(c) weighted.mean(c,weight)),
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var.predicted=apply(.SD,2,function(c) weighted.var(c,weight))),.SDcols=c("Stub","Start","C","B","GA","FA")]
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calibration.stats.2[,wp10:=c("stub","start","c","b","ga","fa")]
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calip.data = ordinal.preds[order(wp10),.(prob.data=sum(weight)/total.weight,
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var.data=var(weight)/total.weight),by=.(wp10)]
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calibration.stats.2 <- calibration.stats.2[calip.data,on=.(wp10)]
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calibration.stats.2$weighttype <- 'Revision weight'
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ordinal.preds[,weight:=rep(1,nrow(ordinal.preds))]
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total.weight <- sum(ordinal.preds$weight)
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print("Calibration stats 3")
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calibration.stats.3 <- ordinal.preds[,.(prob.predicted=apply(.SD,2,function(c) weighted.mean(c,weight)),
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var.predicted=apply(.SD,2,function(c) weighted.var(c,weight))),.SDcols=c("Stub","Start","C","B","GA","FA")]
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calibration.stats.3[,wp10:=c("stub","start","c","b","ga","fa")]
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calip.data = ordinal.preds[order(wp10),.(prob.data=sum(weight)/total.weight,
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var.data=var(weight)/total.weight),by=.(wp10)]
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calibration.stats.3 <- calibration.stats.3[calip.data,on=.(wp10)]
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calibration.stats.3$weighttype <- 'No weight'
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calibration.stats <- rbind(calibration.stats.1,calibration.stats.2,calibration.stats.3)
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calibration.stats[,calibration:=prob.data - prob.predicted]
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remember(calibration.stats, "calibration.stats")
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## p <- ggplot(data.frame(quality.ordinal, quality.even6, quality.even5))
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## p <- p + geom_point(aes(x=quality.even6,y=quality.ordinal)) + geom_smooth(aes(x=quality.even6,y=quality.ordinal))
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## print(p)
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## dev.off()
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## post.pred <- posterior_predict(model.main)
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## preds <- as.character(predict(polrmodel))
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## polrmodel.accuracy <- weighted.mean(preds==df$wp10,df$weight)
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160
analyze_quality_models_revisions.R
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160
analyze_quality_models_revisions.R
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library(MASS)
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library(brms)
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options(mc.cores=28)
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library(ggplot2)
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library(data.table)
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library(arrow)
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library(wCorr)
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source("RemembR/R/RemembeR.R")
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change.remember.file("ordinal.quality.analysis_revisions.RDS")
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#model.1 <- readRDS("models/ordinal_quality_intercept.RDS")
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model.main.pca <- readRDS("models/ordinal_quality_pca_revision.RDS")
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model.main.pca.cumulative <- readRDS("models/ordinal_quality_pca_revision.cumulative.RDS")
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model.qe6 <- readRDS("models/ordinal_quality_qe6_revision.RDS")
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df <- readRDS("data/training_quality_labels.RDS")
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# then compare them with loo
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comparison.loo <- loo_compare(model.main.pca,model.qe6,model.main.pca.cumulative)
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#comparison.waic <- loo_compare(model.main.noC,model.main.noB,model.main.noFa,model.main.noGa,model.main.noStart,model.main.noStub,criterion='waic')
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print(comparison.loo,simplify=F,digits=2)
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remember(comparison.loo,"comparison.loo")
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# LOO Chooses NoC
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best.model <- model.main.pca.cumulative
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pca_features <- readRDS("data/ores_pca_features_revisions.RDS")
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pca_features_unweighted <- readRDS("data/ores_pca_features.noweights.RDS")
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test.df <- readRDS("data/holdout_quality_labels.RDS")
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wpca_transform <- function(wpca, x){
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x <- as.matrix(x)
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centered <- as.matrix(t(t(x) - wpca$means))
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return(centered %*% wpca$basis)
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}
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new_pca_features <- wpca_transform(pca_features, test.df[,.(Stub, Start, C, B, GA, FA)])
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test.df<-test.df[,":="(pca1.revision = new_pca_features[,1],
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pca2.revision = new_pca_features[,2],
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pca3.revision = new_pca_features[,3],
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pca4.revision = new_pca_features[,4],
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pca5.revision = new_pca_features[,5])]
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draws <- as.data.table(best.model)
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test.df <- test.df[,idx.max:=.(apply(test.df[,.(Stub,Start,C,B,GA,FA)],1,which.max))]
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test.df <- test.df[,MPQC:=.(apply(test.df[,.(idx.max)],1,function(idx) c("stub","start","c","b","ga","fa")[idx]))]
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top.preds <- test.df[,MPQC]
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#ordinal.fitted.1 <- fitted(best.model, test.df, scale='response')
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ordinal.fitted <- data.table(fitted(best.model, test.df, scale='linear'))
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remember(ordinal.fitted,'ordinal.fitted')
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ordinal.pred <- ordinal.fitted$Estimate
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quality.ordinal <- ordinal.pred
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quality.even6 <- apply(test.df[,.(Stub,Start,B,C,GA,FA)],1,function(r) r %*% c(0,1,2,3,4,5))
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quality.even5 <- apply(test.df[,.(Stub,Start,B,GA,FA)],1,function(r) r %*% c(1,2,3,4,5))
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test.df <- test.df[,quality.ordinal := quality.ordinal]
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test.df <- test.df[,quality.even6 := quality.even6]
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(spearcor <- weightedCorr(test.df$quality.ordinal, test.df$quality.even6, method='spearman', weights=test.df$revision_weight))
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remember(spearcor, 'spearman.corr')
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(pearsoncor <- weightedCorr(test.df$quality.ordinal, test.df$quality.even6, method='pearson', weights=test.df$revision_weight))
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remember(pearsoncor, 'pearson.corr')
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ordinal.preds <- data.table(predict(best.model, test.df, robust=F))
|
||||
#names(ordinal.preds) <- c("Stub","Start","C","B","A","GA","FA")
|
||||
names(ordinal.preds) <- c("Stub","Start","C","B","GA","FA")
|
||||
ordinal.preds <- ordinal.preds[,idx.max:=.(apply(ordinal.preds[,.(Stub,Start,C,B,GA,FA)],1,which.max))]
|
||||
#ordinal.preds <- ordinal.preds[,predicted:=.(apply(ordinal.preds[,.(idx.max)],1,function(idx) c("stub","start","c","b",'a',"ga","fa")[idx]))]
|
||||
ordinal.preds <- ordinal.preds[,predicted:=.(apply(ordinal.preds[,.(idx.max)],1,function(idx) c("stub","start","c","b","ga","fa")[idx]))]
|
||||
pred.qe6 <- data.table(predict(model.qe6,test.df))
|
||||
names(pred.qe6) <- c("Stub","Start","C","B","GA","FA")
|
||||
pred.qe6 <- pred.qe6[,idx.max:=.(apply(pred.qe6[,.(Stub,Start,C,B,GA,FA)],1,which.max))]
|
||||
#pred.qe6 <- pred.qe6[,predicted:=.(apply(pred.qe6[,.(idx.max)],1,function(idx) c("stub","start","c","b",'a',"ga","fa")[idx]))]
|
||||
pred.qe6 <- pred.qe6[,predicted:=.(apply(pred.qe6[,.(idx.max)],1,function(idx) c("stub","start","c","b","ga","fa")[idx]))]
|
||||
|
||||
test.df <- test.df[,ordinal.pred := ordinal.preds$predicted]
|
||||
test.df <- test.df[,pred.qe6 := pred.qe6$predicted]
|
||||
test.df <- test.df[,idx.max:=.(apply(test.df[,.(Stub,Start,C,B,GA,FA)],1,which.max))]
|
||||
test.df <- test.df[,MPQC:=.(apply(test.df[,.(idx.max)],1,function(idx) c("stub","start","c","b","ga","fa")[idx]))]
|
||||
|
||||
(top.pred.accuracy <- weighted.mean(test.df[,.(MPQC)] == test.df[,.(wp10)],test.df$revision_weight))
|
||||
remember(top.pred.accuracy, "top.pred.accuracy")
|
||||
(ordinal.pred.accuracy <- weighted.mean(test.df[,.(ordinal.pred)] == test.df[,.(wp10)], test.df$revision_weight))
|
||||
remember(ordinal.pred.accuracy, "ordinal.pred.accuracy")
|
||||
quality.even6 <- apply(df[,.(Stub,Start,B,C,GA,FA)],1,function(r) r %*% c(1,2,3,4,5,6))
|
||||
(pred.qe6.accuracy <- weighted.mean(test.df[,.(pred.qe6)] == test.df[,.(wp10)], test.df$revision_weight))
|
||||
remember(ordinal.pred.accuracy, "ordinal.pred.accuracy")
|
||||
remember(best.model, "best.model")
|
||||
|
||||
remember(test.df,'test.df')
|
||||
|
||||
|
||||
ordinal.preds[,wp10:=test.df$wp10]
|
||||
ordinal.preds[,weight:=test.df$article_weight]
|
||||
total.weight <- sum(ordinal.preds$weight)
|
||||
library(modi)
|
||||
calibration.stats.1 <- ordinal.preds[,.(prob.predicted=apply(.SD,2,function(c) weighted.mean(c,weight)),
|
||||
var.predicted=apply(.SD,2,function(c) weighted.var(c,weight))),.SDcols=c("Stub","Start","C","B","GA","FA")]
|
||||
|
||||
calibration.stats.1[,wp10:=c("stub","start","c","b","ga","fa")]
|
||||
calip.data = ordinal.preds[order(wp10),.(prob.data=sum(weight)/total.weight,
|
||||
var.data=var(weight)/total.weight),by=.(wp10)]
|
||||
|
||||
calibration.stats.1 <- calibration.stats.1[calip.data,on=.(wp10)]
|
||||
|
||||
calibration.stats.1$weighttype <- 'Article weight'
|
||||
|
||||
ordinal.preds[,weight:=test.df$revision_weight]
|
||||
total.weight <- sum(ordinal.preds$weight)
|
||||
|
||||
calibration.stats.2 <- ordinal.preds[,.(prob.predicted=apply(.SD,2,function(c) weighted.mean(c,weight)),
|
||||
var.predicted=apply(.SD,2,function(c) weighted.var(c,weight))),.SDcols=c("Stub","Start","C","B","GA","FA")]
|
||||
|
||||
|
||||
calibration.stats.2[,wp10:=c("stub","start","c","b","ga","fa")]
|
||||
calip.data = ordinal.preds[order(wp10),.(prob.data=sum(weight)/total.weight,
|
||||
var.data=var(weight)/total.weight),by=.(wp10)]
|
||||
|
||||
calibration.stats.2 <- calibration.stats.2[calip.data,on=.(wp10)]
|
||||
|
||||
calibration.stats.2$weighttype <- 'Revision weight'
|
||||
|
||||
|
||||
ordinal.preds[,weight:=rep(1,nrow(ordinal.preds))]
|
||||
total.weight <- sum(ordinal.preds$weight)
|
||||
|
||||
calibration.stats.3 <- ordinal.preds[,.(prob.predicted=apply(.SD,2,function(c) weighted.mean(c,weight)),
|
||||
var.predicted=apply(.SD,2,function(c) weighted.var(c,weight))),.SDcols=c("Stub","Start","C","B","GA","FA")]
|
||||
|
||||
|
||||
calibration.stats.3[,wp10:=c("stub","start","c","b","ga","fa")]
|
||||
calip.data = ordinal.preds[order(wp10),.(prob.data=sum(weight)/total.weight,
|
||||
var.data=var(weight)/total.weight),by=.(wp10)]
|
||||
|
||||
calibration.stats.3 <- calibration.stats.3[calip.data,on=.(wp10)]
|
||||
|
||||
calibration.stats.3$weighttype <- 'No weight'
|
||||
|
||||
calibration.stats <- rbind(calibration.stats.1,calibration.stats.2,calibration.stats.3)
|
||||
|
||||
calibration.stats[,'calibration':=prob.data - prob.predicted]
|
||||
|
||||
remember(calibration.stats, "calibration.stats")
|
||||
|
||||
|
||||
## p <- ggplot(data.frame(quality.ordinal, quality.even6, quality.even5))
|
||||
## p <- p + geom_point(aes(x=quality.even6,y=quality.ordinal)) + geom_smooth(aes(x=quality.even6,y=quality.ordinal))
|
||||
|
||||
## print(p)
|
||||
## dev.off()
|
||||
|
||||
## post.pred <- posterior_predict(model.main)
|
||||
## preds <- as.character(predict(polrmodel))
|
||||
## polrmodel.accuracy <- weighted.mean(preds==df$wp10,df$weight)
|
||||
166
analyze_quality_models_unweighted.R
Normal file
166
analyze_quality_models_unweighted.R
Normal file
@@ -0,0 +1,166 @@
|
||||
library(MASS)
|
||||
library(brms)
|
||||
options(mc.cores=28)
|
||||
library(ggplot2)
|
||||
library(data.table)
|
||||
library(arrow)
|
||||
library(wCorr)
|
||||
|
||||
source("RemembR/R/RemembeR.R")
|
||||
|
||||
change.remember.file("ordinal.quality.analysis.noweights.RDS")
|
||||
|
||||
#model.1 <- readRDS("models/ordinal_quality_intercept.RDS")
|
||||
model.main.pca <- readRDS("models/ordinal_quality_pca.noweights.RDS")
|
||||
model.main.pca.cumulative <- readRDS("models/ordinal_quality_pca.noweights.cumulative.RDS")
|
||||
model.qe6 <- readRDS("models/ordinal_quality_qe6.noweights.RDS")
|
||||
df <- readRDS("data/training_quality_labels.RDS")
|
||||
|
||||
# then compare them with loo
|
||||
comparison.loo <- loo_compare(model.main.pca,model.qe6,model.main.pca.cumulative)
|
||||
#comparison.waic <- loo_compare(model.main.noC,model.main.noB,model.main.noFa,model.main.noGa,model.main.noStart,model.main.noStub,criterion='waic')
|
||||
print(comparison.loo,simplify=F,digits=2)
|
||||
remember(comparison.loo,"comparison.loo")
|
||||
|
||||
# LOO Chooses NoC
|
||||
best.model <- model.main.pca.cumulative
|
||||
|
||||
pca_features_unweighted <- readRDS("data/ores_pca_features.noweights.RDS")
|
||||
|
||||
test.df <- readRDS("data/holdout_quality_labels.RDS")
|
||||
|
||||
wpca_transform <- function(wpca, x){
|
||||
x <- as.matrix(x)
|
||||
centered <- as.matrix(t(t(x) - wpca$means))
|
||||
return(centered %*% wpca$basis)
|
||||
}
|
||||
|
||||
unweighted.pca <- wpca_transform(pca_features_unweighted, test.df[,.(Stub, Start, C, B, GA, FA)])
|
||||
|
||||
test.df <- test.df[,":="(pca1.noweights = unweighted.pca[,1],
|
||||
pca2.noweights = unweighted.pca[,2],
|
||||
pca3.noweights = unweighted.pca[,3],
|
||||
pca4.noweights = unweighted.pca[,4],
|
||||
pca5.noweights = unweighted.pca[,5],
|
||||
pca6.noweights = unweighted.pca[,6])]
|
||||
|
||||
draws <- as.data.table(best.model)
|
||||
|
||||
test.df <- test.df[,idx.max:=.(apply(test.df[,.(Stub,Start,C,B,GA,FA)],1,which.max))]
|
||||
test.df <- test.df[,MPQC:=.(apply(test.df[,.(idx.max)],1,function(idx) c("stub","start","c","b","ga","fa")[idx]))]
|
||||
top.preds <- test.df[,MPQC]
|
||||
|
||||
#ordinal.fitted.1 <- fitted(best.model, test.df, scale='response')
|
||||
ordinal.fitted <- data.table(fitted(best.model, test.df, scale='linear'))
|
||||
ordinal.pred <- ordinal.fitted$Estimate
|
||||
remember(ordinal.fitted,'ordinal.fitted')
|
||||
|
||||
quality.ordinal <- ordinal.pred
|
||||
quality.even6 <- apply(test.df[,.(Stub,Start,B,C,GA,FA)],1,function(r) r %*% c(0,1,2,3,4,5))
|
||||
quality.even5 <- apply(test.df[,.(Stub,Start,B,GA,FA)],1,function(r) r %*% c(1,2,3,4,5))
|
||||
|
||||
test.df <- test.df[,quality.ordinal := quality.ordinal]
|
||||
test.df <- test.df[,quality.even6 := quality.even6]
|
||||
|
||||
(spearcor <- cor(test.df$quality.ordinal, test.df$quality.even6, method='spearman'))
|
||||
remember(spearcor, 'spearman.corr')
|
||||
(pearsoncor <- cor(test.df$quality.ordinal, test.df$quality.even6, method='pearson'))
|
||||
remember(pearsoncor, 'pearson.corr')
|
||||
|
||||
ordinal.preds <- data.table(predict(best.model, test.df, robust=T))
|
||||
#names(ordinal.preds) <- c("Stub","Start","C","B","A","GA","FA")
|
||||
names(ordinal.preds) <- c("Stub","Start","C","B","GA","FA")
|
||||
ordinal.preds <- ordinal.preds[,idx.max:=.(apply(ordinal.preds[,.(Stub,Start,C,B,GA,FA)],1,which.max))]
|
||||
#ordinal.preds <- ordinal.preds[,predicted:=.(apply(ordinal.preds[,.(idx.max)],1,function(idx) c("stub","start","c","b",'a',"ga","fa")[idx]))]
|
||||
ordinal.preds <- ordinal.preds[,predicted:=.(apply(ordinal.preds[,.(idx.max)],1,function(idx) c("stub","start","c","b","ga","fa")[idx]))]
|
||||
pred.qe6 <- data.table(predict(model.qe6,test.df))
|
||||
names(pred.qe6) <- c("Stub","Start","C","B","GA","FA")
|
||||
pred.qe6 <- pred.qe6[,idx.max:=.(apply(pred.qe6[,.(Stub,Start,C,B,GA,FA)],1,which.max))]
|
||||
#pred.qe6 <- pred.qe6[,predicted:=.(apply(pred.qe6[,.(idx.max)],1,function(idx) c("stub","start","c","b",'a',"ga","fa")[idx]))]
|
||||
pred.qe6 <- pred.qe6[,predicted:=.(apply(pred.qe6[,.(idx.max)],1,function(idx) c("stub","start","c","b","ga","fa")[idx]))]
|
||||
|
||||
test.df <- test.df[,ordinal.pred := ordinal.preds$predicted]
|
||||
test.df <- test.df[,pred.qe6 := pred.qe6$predicted]
|
||||
test.df <- test.df[,idx.max:=.(apply(test.df[,.(Stub,Start,C,B,GA,FA)],1,which.max))]
|
||||
test.df <- test.df[,MPQC:=.(apply(test.df[,.(idx.max)],1,function(idx) c("stub","start","c","b","ga","fa")[idx]))]
|
||||
|
||||
(top.pred.accuracy <- test.df[,mean(MPQC==wp10)])
|
||||
remember(top.pred.accuracy, "top.pred.accuracy")
|
||||
(ordinal.pred.accuracy <- test.df[,mean(ordinal.pred == wp10)])
|
||||
remember(ordinal.pred.accuracy, "ordinal.pred.accuracy")
|
||||
quality.even6 <- apply(df[,.(Stub,Start,B,C,GA,FA)],1,function(r) r %*% c(1,2,3,4,5,6))
|
||||
(pred.qe6.accuracy <- mean(test.df[,.(pred.qe6)] == test.df[,.(wp10)]))
|
||||
remember(ordinal.pred.accuracy, "ordinal.pred.accuracy")
|
||||
remember(best.model, "best.model")
|
||||
|
||||
(accuracy.macro <- test.df[,.(top.pred.accuracy = mean(MPQC==wp10),
|
||||
ordinal.pred.accuracy = mean(ordinal.pred==wp10),
|
||||
pred.qe6.accuracy = mean(pred.qe6==wp10)),by=.(wp10)])
|
||||
|
||||
accuracy.macro[,sapply(.SD,mean), .SDcols=c("top.pred.accuracy","ordinal.pred.accuracy","pred.qe6.accuracy")]
|
||||
|
||||
|
||||
remember(test.df,'test.df')
|
||||
|
||||
|
||||
ordinal.preds[,wp10:=test.df$wp10]
|
||||
ordinal.preds[,weight:=test.df$article_weight]
|
||||
total.weight <- sum(ordinal.preds$weight)
|
||||
library(modi)
|
||||
calibration.stats.1 <- ordinal.preds[,.(prob.predicted=apply(.SD,2,function(c) weighted.mean(c,weight)),
|
||||
var.predicted=apply(.SD,2,function(c) weighted.var(c,weight))),.SDcols=c("Stub","Start","C","B","GA","FA")]
|
||||
|
||||
calibration.stats.1[,wp10:=c("stub","start","c","b","ga","fa")]
|
||||
calip.data = ordinal.preds[order(wp10),.(prob.data=sum(weight)/total.weight,
|
||||
var.data=var(weight)/total.weight),by=.(wp10)]
|
||||
|
||||
calibration.stats.1 <- calibration.stats.1[calip.data,on=.(wp10)]
|
||||
|
||||
calibration.stats.1$weighttype <- 'Article weight'
|
||||
|
||||
ordinal.preds[,weight:=test.df$revision_weight]
|
||||
total.weight <- sum(ordinal.preds$weight)
|
||||
|
||||
calibration.stats.2 <- ordinal.preds[,.(prob.predicted=apply(.SD,2,function(c) weighted.mean(c,weight)),
|
||||
var.predicted=apply(.SD,2,function(c) weighted.var(c,weight))),.SDcols=c("Stub","Start","C","B","GA","FA")]
|
||||
|
||||
|
||||
calibration.stats.2[,wp10:=c("stub","start","c","b","ga","fa")]
|
||||
calip.data = ordinal.preds[order(wp10),.(prob.data=sum(weight)/total.weight,
|
||||
var.data=var(weight)/total.weight),by=.(wp10)]
|
||||
|
||||
calibration.stats.2 <- calibration.stats.2[calip.data,on=.(wp10)]
|
||||
|
||||
calibration.stats.2$weighttype <- 'Revision weight'
|
||||
|
||||
|
||||
ordinal.preds[,weight:=rep(1,nrow(ordinal.preds))]
|
||||
total.weight <- sum(ordinal.preds$weight)
|
||||
|
||||
calibration.stats.3 <- ordinal.preds[,.(prob.predicted=apply(.SD,2,function(c) weighted.mean(c,weight)),
|
||||
var.predicted=apply(.SD,2,function(c) weighted.var(c,weight))),.SDcols=c("Stub","Start","C","B","GA","FA")]
|
||||
|
||||
|
||||
calibration.stats.3[,wp10:=c("stub","start","c","b","ga","fa")]
|
||||
calip.data = ordinal.preds[order(wp10),.(prob.data=sum(weight)/total.weight,
|
||||
var.data=var(weight)/total.weight),by=.(wp10)]
|
||||
|
||||
calibration.stats.3 <- calibration.stats.3[calip.data,on=.(wp10)]
|
||||
|
||||
calibration.stats.3$weighttype <- 'No weight'
|
||||
|
||||
calibration.stats <- rbind(calibration.stats.1,calibration.stats.2,calibration.stats.3)
|
||||
|
||||
calibration.stats[,'calibration':=prob.data - prob.predicted]
|
||||
|
||||
remember(calibration.stats, "calibration.stats")
|
||||
|
||||
## p <- ggplot(data.frame(quality.ordinal, quality.even6, quality.even5))
|
||||
## p <- p + geom_point(aes(x=quality.even6,y=quality.ordinal)) + geom_smooth(aes(x=quality.even6,y=quality.ordinal))
|
||||
|
||||
## print(p)
|
||||
## dev.off()
|
||||
|
||||
## post.pred <- posterior_predict(model.main)
|
||||
## preds <- as.character(predict(polrmodel))
|
||||
## polrmodel.accuracy <- weighted.mean(preds==df$wp10,df$weight)
|
||||
31
load_data.R
Normal file
31
load_data.R
Normal file
@@ -0,0 +1,31 @@
|
||||
library(MASS)
|
||||
library(brms)
|
||||
options(mc.cores=28)
|
||||
|
||||
library(data.table)
|
||||
library(arrow)
|
||||
|
||||
sample.params <- readRDS("remember_sample_quality_labels.RDS")
|
||||
|
||||
df <- data.table(read_feather("data/scored_article_sample.feather"))
|
||||
wp10dict <- list('start','stub','c','b','a','ga','fa')
|
||||
df[,wp10:=wp10dict[wp10]]
|
||||
df <- df[,wp10:=factor(wp10,levels=c('stub','start','c','b','a','ga','fa'),ordered=TRUE)]
|
||||
## remove 'a' class articles for a fair comparison.
|
||||
df <- df[wp10!='a']
|
||||
df <- df[,datetime := as.POSIXct(timestamp,format="%Y%m%d%H%M%S")]
|
||||
df <- df[,datetime.numeric := as.numeric(timestamp)]
|
||||
df <- df[,datetime.numeric := (datetime.numeric - min(datetime.numeric))]
|
||||
df <- df[,datetime.numeric := datetime.numeric/max(datetime.numeric)]
|
||||
|
||||
data.counts <- data.table(sample.params$label_sample_counts)
|
||||
#data.counts <- data.counts[,wp10:=factor(wp10,levels=c('stub','start','c','b','a','ga','fa'),ordered=TRUE)]
|
||||
data.counts <- data.counts[,wp10:=factor(wp10,levels=c('stub','start','c','b','a','ga','fa'),ordered=TRUE)]
|
||||
sample.counts <- df[,.(.N),by=.(wp10)][order(wp10)]
|
||||
#sample.counts <- sample.counts[,wp10:=factor(wp10,levels=c('stub','start','c','b','a','ga','fa'),ordered=TRUE)]
|
||||
sample.counts <- sample.counts[,wp10:=factor(wp10,levels=c('stub','start','c','b','ga','fa'),ordered=TRUE)]
|
||||
weights <- data.counts[sample.counts,on=.(wp10)]
|
||||
weights <- weights[,article_weight:=(n_articles/sum(weights$n_articles))/(N/sum(weights$N))]
|
||||
weights <- weights[,revision_weight:=(n_revisions/sum(weights$n_revisions))/(N/sum(weights$N))]
|
||||
df <- df[weights,on=.(wp10)]
|
||||
df[,quality.even6 := apply(df[,.(Stub,Start,B,C,GA,FA)],1,function(r) r %*% c(1,2,3,4,5,6))]
|
||||
202
ordinal_quality_models.R
Normal file
202
ordinal_quality_models.R
Normal file
@@ -0,0 +1,202 @@
|
||||
source("RemembR/R/RemembeR.R")
|
||||
source("load_data.R")
|
||||
change.remember.file("ordinal.quality.model.RDS")
|
||||
|
||||
test <- F
|
||||
|
||||
remember(weights, "sample.weights")
|
||||
|
||||
n.holdout <- 4000
|
||||
remember(n.holdout,"n.holdout")
|
||||
holdout <- df[sample(.N,n.holdout)]
|
||||
saveRDS(holdout,'data/holdout_quality_labels.RDS')
|
||||
df <- df[!(revid %in% holdout$revid)]
|
||||
saveRDS(df,'data/training_quality_labels.RDS')
|
||||
|
||||
if(test == TRUE){
|
||||
df <- df[sample(.N,2000)]
|
||||
}
|
||||
|
||||
## So it turns out that the 6 predictors we have are highly correlated creating problems for sampling so use QR decomposition
|
||||
df <- df[!is.na(wp10)]
|
||||
|
||||
df[, start.p.stub := Start + Stub]
|
||||
|
||||
saveRDS(df,"data/training_quality_labels.RDS")
|
||||
|
||||
## So it turns out that the 6 predictors we have are highly correlated creating problems for sampling so use QR decomposition
|
||||
df <- df[!is.na(wp10)]
|
||||
|
||||
df[, start.p.stub := Start + Stub]
|
||||
|
||||
fam.cloglog <- sratio(link='cloglog', threshold='flexible')
|
||||
#formula.1 <- brmsformula(wp10 | weights(weight) ~ 1,decomp='QR',center=TRUE)
|
||||
|
||||
fam <- sratio(link='logit', threshold='flexible')
|
||||
fam.cumulative <- sratio(link='logit', threshold='flexible')
|
||||
|
||||
## It turns out that the matrix is singular if we include all the predictors.
|
||||
## C is the most correlated with the other variables so for now let's remove it.
|
||||
|
||||
## it turns out that we don't need to do model selection at all since we don't care about the coefficients.
|
||||
## we can just do the csv!
|
||||
x <- df[,.(Stub,Start,C,B,GA,FA)]
|
||||
|
||||
wpca <- function(x, weight){
|
||||
name <- names(x)
|
||||
x <- as.matrix(x)
|
||||
means <- unlist(lapply(1:dim(x)[2], function(i) weighted.mean(x[,i], weight)))
|
||||
names(means) <- name
|
||||
centered <- as.matrix(t(t(x) - means))
|
||||
weightmat <- diag(weight)
|
||||
covmat <- t(centered) %*% weightmat %*% centered / (sum(weight) - 1)
|
||||
|
||||
factors <- eigen(covmat)
|
||||
basis <- factors$vectors
|
||||
result <- centered %*% basis
|
||||
# return a list with the info we need to do the transformation
|
||||
return(list(means=means, basis=basis, x=result))
|
||||
}
|
||||
|
||||
#unweighted.pca <- wpca(df[,.(Stub,Start,C,B,GA,FA)],rep(1,nrow(df)))
|
||||
upca <- prcomp(df[,.(Stub,Start,C,B,GA,FA)])
|
||||
unweighted.pca <- list(means = upca$center, basis=upca$rotation, x=upca$x)
|
||||
saveRDS(unweighted.pca,"data/ores_pca_features.noweights.RDS")
|
||||
|
||||
weighted.pca <- wpca(df[,.(Stub,Start,C,B,GA,FA)],df$article_weight)
|
||||
saveRDS(weighted.pca, "data/ores_pca_features.RDS")
|
||||
|
||||
revision.pca <- wpca(df[,.(Stub,Start,C,B,GA,FA)],df$revision_weight)
|
||||
saveRDS(revision.pca, "data/ores_pca_features_revisions.RDS")
|
||||
|
||||
df <- df[,":="(pca1 = weighted.pca$x[,1],
|
||||
pca2 = weighted.pca$x[,2],
|
||||
pca3 = weighted.pca$x[,3],
|
||||
pca4 = weighted.pca$x[,4],
|
||||
pca5 = weighted.pca$x[,5],
|
||||
pca6 = weighted.pca$x[,6])]
|
||||
|
||||
df <- df[,":="(pca1.revision = revision.pca$x[,1],
|
||||
pca2.revision = revision.pca$x[,2],
|
||||
pca3.revision = revision.pca$x[,3],
|
||||
pca4.revision = revision.pca$x[,4],
|
||||
pca5.revision = revision.pca$x[,5],
|
||||
pca6.revision = revision.pca$x[,6])]
|
||||
|
||||
df <- df[,":="(pca1.noweights = unweighted.pca$x[,1],
|
||||
pca2.noweights = unweighted.pca$x[,2],
|
||||
pca3.noweights = unweighted.pca$x[,3],
|
||||
pca4.noweights = unweighted.pca$x[,4],
|
||||
pca5.noweights = unweighted.pca$x[,5],
|
||||
pca6.noweights = unweighted.pca$x[,6])]
|
||||
|
||||
qformula.main.pca.cs <- brmsformula(wp10 | weights(article_weight) ~ cs(pca1) + cs(pca2) + cs(pca3) + cs(pca4) + cs(pca5))
|
||||
formula.main.pca.noweights.cs <- brmsformula(wp10 ~ cs(pca1.noweights) + cs(pca2.noweights) + cs(pca3.noweights) + cs(pca4.noweights) + cs(pca5.noweights))
|
||||
formula.revision.pca.cs <- brmsformula(wp10 | weights(revision_weight) ~ cs(pca1.revision) + cs(pca2.revision) + cs(pca3.revision) + cs(pca4.revision) + cs(pca5.revision))
|
||||
formula.qe6.cs <- brmsformula(wp10 | weights(article_weight) ~ cs(quality.even6))
|
||||
formula.qe6.revision.cs <- brmsformula(wp10 | weights(revision_weight) ~ cs(quality.even6))
|
||||
formula.qe6.noweights.cs <- brmsformula(wp10 ~ cs(quality.even6))
|
||||
|
||||
formula.main.pca <- brmsformula(wp10 | weights(article_weight) ~ pca1 + pca2 + pca3 + pca4 + pca5)
|
||||
formula.main.pca.noweights <- brmsformula(wp10 ~ pca1.noweights + pca2.noweights + pca3.noweights + pca4.noweights + pca5.noweights)
|
||||
formula.revision.pca <- brmsformula(wp10 | weights(revision_weight) ~ pca1.revision + pca2.revision + pca3.revision + pca4.revision + pca5.revision)
|
||||
formula.qe6 <- brmsformula(wp10 | weights(article_weight) ~ quality.even6)
|
||||
formula.qe6.revision <- brmsformula(wp10 | weights(revision_weight) ~ quality.even6)
|
||||
formula.qe6.noweights <- brmsformula(wp10 ~ quality.even6)
|
||||
|
||||
formula.scores.noweights <- brmsformula(wp10 ~ Start + Stub + GA + FA + B)
|
||||
|
||||
|
||||
library(future)
|
||||
library(parallel)
|
||||
options(mc.cores = parallel::detectCores())
|
||||
|
||||
plan(lapply(1:7,function(x) tweak(multisession, workers=4)))
|
||||
|
||||
model.main.pca %<-% brm(formula=formula.main.pca, data=df, family=fam, control=list(max_treedepth=15), future=TRUE, save_pars=save_pars(all=TRUE))
|
||||
model.qe6 %<-% brm(formula.qe6, data=df, family=fam, control=list(max_treedepth=15),future=TRUE,save_pars=save_pars(all=TRUE))
|
||||
|
||||
model.main.revision %<-% brm(formula=formula.revision.pca, data=df, family=fam, control=list(max_treedepth=15), future=TRUE, save_pars=save_pars(all=TRUE))
|
||||
|
||||
model.qe6.revision %<-% brm(formula.qe6.revision, data=df, family=fam, control=list(max_treedepth=15),future=TRUE,save_pars=save_pars(all=TRUE))
|
||||
model.qe6.noweights %<-% brm(formula.qe6.noweights, data=df, family=fam, control=list(max_treedepth=15),future=TRUE,save_pars=save_pars(all=TRUE))
|
||||
model.main.pca.noweights %<-% brm(formula=formula.main.pca.noweights, data=df, family=fam, control=list(max_treedepth=15), future=TRUE,save_pars=save_pars(all=TRUE))
|
||||
|
||||
## model.main.pca.cs %<-% brm(formula=formula.main.pca.cs, data=df, family=fam, control=list(max_treedepth=15), future=TRUE, save_pars=save_pars(all=TRUE))
|
||||
## model.qe6.cs %<-% brm(formula.qe6.cs, data=df, family=fam, control=list(max_treedepth=15),future=TRUE,save_pars=save_pars(all=TRUE))
|
||||
|
||||
## model.main.revision.cs %<-% brm(formula=formula.revision.pca.cs, data=df, family=fam, control=list(max_treedepth=15), future=TRUE, save_pars=save_pars(all=TRUE))
|
||||
|
||||
## model.qe6.revision.cs %<-% brm(formula.qe6.revision.cs, data=df, family=fam, control=list(max_treedepth=15),future=TRUE,save_pars=save_pars(all=TRUE))
|
||||
## model.qe6.noweights.cs %<-% brm(formula.qe6.noweights.cs, data=df, family=fam, control=list(max_treedepth=15),future=TRUE,save_pars=save_pars(all=TRUE))
|
||||
## model.main.pca.noweights.cs %<-% brm(formula=formula.main.pca.noweights.cs, data=df, family=fam, control=list(max_treedepth=15), future=TRUE,save_pars=save_pars(all=TRUE))
|
||||
|
||||
model.main.pca.cumulative %<-% brm(formula=formula.main.pca, data=df, family=fam.cumulative, control=list(max_treedepth=15), future=TRUE, save_pars=save_pars(all=TRUE))
|
||||
model.qe6.cumulative %<-% brm(formula.qe6, data=df, family=fam.cumulative, control=list(max_treedepth=15),future=TRUE,save_pars=save_pars(all=TRUE))
|
||||
|
||||
model.main.revision.cumulative %<-% brm(formula=formula.revision.pca, data=df, family=fam.cumulative, control=list(max_treedepth=15), future=TRUE, save_pars=save_pars(all=TRUE))
|
||||
|
||||
model.qe6.revision.cumulative %<-% brm(formula.qe6.revision, data=df, family=fam.cumulative, control=list(max_treedepth=15),future=TRUE,save_pars=save_pars(all=TRUE))
|
||||
model.qe6.noweights.cumulative %<-% brm(formula.qe6.noweights, data=df, family=fam.cumulative, control=list(max_treedepth=15),future=TRUE,save_pars=save_pars(all=TRUE))
|
||||
model.main.pca.noweights.cumulative %<-% brm(formula=formula.main.pca.noweights, data=df, family=fam.cumulative, control=list(max_treedepth=15), future=TRUE,save_pars=save_pars(all=TRUE))
|
||||
|
||||
|
||||
#model.scores.noweights <- brm(formula=formula.scores.noweights, data=df, family=fam, control=list(max_treedepth=15), future=TRUE,save_pars=save_pars(all=TRUE))
|
||||
|
||||
models <- resolve(globalenv(),result=F)
|
||||
print("adding loo")
|
||||
|
||||
model.main.revision <- add_criterion(model.main.revision,'loo',moment_match=T)
|
||||
model.main.pca <- add_criterion(model.main.pca,'loo',moment_match=T)
|
||||
model.qe6.revision <- add_criterion(model.qe6.revision,'loo')
|
||||
model.qe6 <- add_criterion(model.qe6,'loo')
|
||||
model.main.pca.noweights <- add_criterion(model.main.pca.noweights,'loo',moment_match=T)
|
||||
model.qe6.noweights <- add_criterion(model.qe6.noweights,'loo')
|
||||
|
||||
model.main.revision.cumulative <- add_criterion(model.main.revision.cumulative,'loo',moment_match=T)
|
||||
model.main.pca.cumulative <- add_criterion(model.main.pca.cumulative,'loo',moment_match=T)
|
||||
model.qe6.revision.cumulative <- add_criterion(model.qe6.revision.cumulative,'loo')
|
||||
model.qe6.cumulative <- add_criterion(model.qe6.cumulative,'loo')
|
||||
model.main.pca.noweights.cumulative <- add_criterion(model.main.pca.noweights.cumulative,'loo',moment_match=T)
|
||||
model.qe6.noweights.cumulative <- add_criterion(model.qe6.noweights.cumulative,'loo')
|
||||
|
||||
|
||||
## model.main.revision.cs <- add_criterion(model.main.revision.cs,'loo',moment_match=T)
|
||||
## model.main.pca.cs <- add_criterion(model.main.pca.cs,'loo',moment_match=T)
|
||||
## model.qe6.revision.cs <- add_criterion(model.qe6.revision.cs,'loo')
|
||||
## model.qe6.cs <- add_criterion(model.qe6.cs,'loo')
|
||||
## model.main.pca.noweights.cs <- add_criterion(model.main.pca.noweights.cs,'loo',moment_match=T)
|
||||
## model.qe6.noweights.cs <- add_criterion(model.qe6.noweights.cs,'loo')
|
||||
|
||||
saveRDS(model.qe6.revision,"models/ordinal_quality_qe6_revision.RDS")
|
||||
saveRDS(model.qe6,"models/ordinal_quality_qe6.RDS")
|
||||
saveRDS(model.main.pca.noweights,"models/ordinal_quality_pca.noweights.RDS")
|
||||
saveRDS(model.qe6.noweights,"models/ordinal_quality_qe6.noweights.RDS")
|
||||
saveRDS(model.main.pca,"models/ordinal_quality_pca.RDS")
|
||||
saveRDS(model.main.revision,"models/ordinal_quality_pca_revision.RDS")
|
||||
|
||||
saveRDS(model.qe6.revision.cumulative,"models/ordinal_quality_qe6_revision.cumulative.RDS")
|
||||
saveRDS(model.qe6.cumulative,"models/ordinal_quality_qe6.cumulative.RDS")
|
||||
saveRDS(model.main.pca.noweights.cumulative,"models/ordinal_quality_pca.noweights.cumulative.RDS")
|
||||
saveRDS(model.qe6.noweights.cumulative,"models/ordinal_quality_qe6.noweights.cumulative.RDS")
|
||||
saveRDS(model.main.pca.cumulative,"models/ordinal_quality_pca.cumulative.RDS")
|
||||
saveRDS(model.main.revision.cumulative,"models/ordinal_quality_pca_revision.cumulative.RDS")
|
||||
|
||||
## saveRDS(model.qe6.revision.cs,"models/ordinal_quality_qe6_revision.RDS")
|
||||
## saveRDS(model.qe6.cs,"models/ordinal_quality_qe6.RDS")
|
||||
## saveRDS(model.main.pca.noweights.cs,"models/ordinal_quality_pca.noweights.RDS")
|
||||
## saveRDS(model.qe6.noweights.cs,"models/ordinal_quality_qe6.noweights.RDS")
|
||||
## saveRDS(model.main.pca.cs,"models/ordinal_quality_pca.RDS")
|
||||
## saveRDS(model.main.revision.cs,"models/ordinal_quality_pca_revision.RDS")
|
||||
|
||||
|
||||
|
||||
models <- resolve(globalenv(),result=F)
|
||||
|
||||
|
||||
|
||||
|
||||
|
||||
|
||||
|
||||
|
||||
2
ores_score_sample.sh
Executable file
2
ores_score_sample.sh
Executable file
@@ -0,0 +1,2 @@
|
||||
#!/bin/bash
|
||||
python3 ores_scores_sample.py --sample_file="/data/nti9383home/production_functions/data/20200301_article_labelings_sample.feather" --output=/data/nti9383home/production_functions/data/scored_article_sample.feather
|
||||
97
ores_scores_sample.py
Normal file
97
ores_scores_sample.py
Normal file
@@ -0,0 +1,97 @@
|
||||
import mwapi
|
||||
from revscoring import Model
|
||||
import articlequality
|
||||
import pyarrow
|
||||
import pandas as pd
|
||||
import scoring_utils
|
||||
from itertools import chain, zip_longest
|
||||
from multiprocessing import Pool
|
||||
from functools import partial
|
||||
from pyRemembeR import Remember
|
||||
import fire
|
||||
from pathlib import Path
|
||||
import tqdm
|
||||
remember = Remember("score_sample_articles.RDS")
|
||||
|
||||
def get_revision_text(revid_batch, api):
|
||||
revid_batch = filter(lambda rid: rid is not None, revid_batch)
|
||||
doc = api.get(action='query',
|
||||
prop='revisions',
|
||||
revids=revid_batch,
|
||||
rvprop=['ids','content'],
|
||||
rvslots=['main'])
|
||||
pages = doc.get('query',{}).get('pages',{})
|
||||
for pageid, doc in pages.items():
|
||||
revisions = doc.get('revisions',[])
|
||||
for revision in revisions:
|
||||
text = revision.get('slots',{}).get('main',{}).get('*',{})
|
||||
yield {'revid':revision.get('revid',{}), 'text':text}
|
||||
|
||||
def grouper(n, iterable, fillvalue=None):
|
||||
"grouper(3, 'ABCDEFG', 'x') --> ABC DEF Gxx"
|
||||
args = [iter(iterable)] * n
|
||||
return zip_longest(fillvalue=fillvalue, *args)
|
||||
|
||||
def pull_revision_texts(revids, api, api_batch_size):
|
||||
batches = grouper(api_batch_size,revids)
|
||||
get_revision_text_2 = partial(get_revision_text,api=api)
|
||||
revs = chain(* map(get_revision_text_2, batches))
|
||||
yield from revs
|
||||
|
||||
def score_revisions(revids, api, api_batch_size=50, parallel=True):
|
||||
|
||||
revs = pull_revision_texts(revids, api, api_batch_size)
|
||||
|
||||
ncores = 28
|
||||
pool = Pool(ncores)
|
||||
scorer_model = Model.load(open('articlequality/models/enwiki.nettrom_wp10.gradient_boosting.model', 'rb'))
|
||||
add_score = partial(scoring_utils.add_score, scorer_model=scorer_model)
|
||||
|
||||
if parallel:
|
||||
ncores = 48
|
||||
pool = Pool(ncores)
|
||||
|
||||
revs = pool.imap_unordered(add_score, revs, chunksize = api_batch_size*4)
|
||||
else:
|
||||
revs = map(add_score,revs)
|
||||
|
||||
to_pddict = partial(scoring_utils.to_pddict,kept_keys=['revid'])
|
||||
revs = map(to_pddict, revs)
|
||||
yield from revs
|
||||
|
||||
#sample_file_parquet = "data/article_sample_set.parquet"; output_feather="data/scored_article_sample.feather";
|
||||
|
||||
sample_file="/data/nti9383home/production_functions/data/20200301_article_labelings_sample.feather";output="/data/nti9383home/production_functions/data/scored_article_sample.feather"
|
||||
|
||||
def score_sample(sample_file = "data/article_sample_set.feather", output="data/scored_article_sample.feather"):
|
||||
|
||||
sample = pd.read_feather(sample_file)
|
||||
|
||||
revids = set(sample.revid)
|
||||
user_agent = "Nate TeBlunthuis <nathante@uw.edu>. What's the relationship between contributors and article quality?"
|
||||
api = mwapi.Session("https://en.wikipedia.org",user_agent=user_agent)
|
||||
|
||||
scores = tqdm.tqdm(score_revisions(revids, api, 50, True),total=len(revids),miniters=100,smoothing=0.2)
|
||||
|
||||
p = Path(output)
|
||||
output_csv = Path(str(p).replace("".join(p.suffixes), ".csv"))
|
||||
output_json = Path(str(p).replace("".join(p.suffixes), ".json"))
|
||||
output_feather = Path(str(p).replace("".join(p.suffixes), ".feather"))
|
||||
|
||||
saved_scores = list()
|
||||
with open(output_json,'w') as of:
|
||||
for score in scores:
|
||||
of.write(str(score) + '\n')
|
||||
saved_scores.append(score)
|
||||
|
||||
|
||||
scored_revids = pd.DataFrame(saved_scores)
|
||||
sample_1 = sample.merge(scored_revids,left_on="revid",right_on="revid")
|
||||
remember(sample_1.shape[0],"sample_size_unscored")
|
||||
|
||||
remember(sample_1.shape[0],"sample_size_scored")
|
||||
sample_1.to_feather(output_feather)
|
||||
sample_1.to_csv(output_csv)
|
||||
|
||||
if __name__ == "__main__":
|
||||
fire.Fire(score_sample)
|
||||
5
run_ordinal_quality.sh
Executable file
5
run_ordinal_quality.sh
Executable file
@@ -0,0 +1,5 @@
|
||||
#!/bin/bash
|
||||
Rscript ordinal_quality_models.R && \
|
||||
Rscript analyze_quality_models.R && \
|
||||
Rscript analyze_quality_models_unweighted.R
|
||||
Rscript analyze_quality_models_revisions.R
|
||||
BIN
run_wikiq.tar.gz
Normal file
BIN
run_wikiq.tar.gz
Normal file
Binary file not shown.
348
sample_training_labels.py
Executable file
348
sample_training_labels.py
Executable file
@@ -0,0 +1,348 @@
|
||||
#!/usr/bin/env python3
|
||||
|
||||
'''
|
||||
Take a stratified sample of article quality labels.
|
||||
|
||||
For now we just stratify by label type.
|
||||
Later we might add date.
|
||||
Later we might stratify by wikiproject too.
|
||||
|
||||
A key limitation of this approach is that we can sample on the level of the page.
|
||||
We'd really like to be able to sample on the level of edit session.
|
||||
But that isn't possible because of how article assessments work.
|
||||
'''
|
||||
from itertools import islice, chain
|
||||
from pathlib import Path
|
||||
import pandas as pd
|
||||
import numpy as np
|
||||
random = np.random.RandomState(1968)
|
||||
import json
|
||||
import pyarrow.feather as feather
|
||||
import fire
|
||||
from collections import Counter
|
||||
from pyRemembeR import Remember
|
||||
from enum import IntEnum, unique
|
||||
from datetime import datetime
|
||||
from dataclasses import dataclass, asdict
|
||||
from multiprocessing import Pool
|
||||
from urllib.parse import unquote
|
||||
from pyspark.sql import functions as f
|
||||
from pyspark.sql import SparkSession, Window
|
||||
from pyspark.sql.functions import udf
|
||||
from pyspark.sql.types import StringType
|
||||
from numpy import dtype
|
||||
import csv
|
||||
|
||||
def wikiq_to_parquet():
|
||||
|
||||
path = Path("/gscratch/comdata/users/nathante/wikiqRunning/wikiq_output/")
|
||||
outpath = Path("/gscratch/comdata/output/wikiq_enwiki_20200301_nathante_parquet/")
|
||||
files = list(map(Path,path.glob("*.tsv")))
|
||||
dumpfile = files[0]
|
||||
|
||||
def wikiq_tsv_to_parquet(dumpfile, outpath = Path("/gscratch/comdata/output/wikiq_enwiki_20200301_nathante.parquet/")):
|
||||
outfile = outpath / (dumpfile.name + ".parquet")
|
||||
outpath.mkdir(parents=True, exist_ok=True)
|
||||
_wikiq_tsv_to_parquet(dumpfile,outfile)
|
||||
|
||||
dumpfile = Path("/gscratch/comdata/users/nathante/wikiqRunning/wikiq_output/enwiki-20200301-pages-meta-history12-p4980874p5038451.tsv")
|
||||
|
||||
def _wikiq_tsv_to_parquet(dumpfile, outfile):
|
||||
|
||||
dtypes = {'anon': dtype('O'), 'articleid': dtype('int64'), 'deleted': dtype('bool'), 'editor': dtype('O'), 'editor_id': dtype('float64'), 'minor': dtype('bool'), 'namespace': dtype('int64'), 'revert': dtype('O'), 'reverteds': dtype('O'), 'revid': dtype('int64'), 'sha1': dtype('O'), 'text_chars': dtype('float64'), 'title': dtype('O')}
|
||||
|
||||
print(dumpfile)
|
||||
df = pd.read_csv(dumpfile,sep='\t',quoting=csv.QUOTE_NONE,error_bad_lines=False, warn_bad_lines=True,parse_dates=['date_time'],dtype=dtypes)
|
||||
|
||||
df.to_parquet(outfile)
|
||||
|
||||
with Pool(28) as pool:
|
||||
jobs = pool.imap_unordered(wikiq_tsv_to_parquet, files)
|
||||
list(jobs)
|
||||
|
||||
spark = SparkSession.builder.getOrCreate()
|
||||
|
||||
@udf(StringType())
|
||||
def decode_strip_udf(val):
|
||||
if val is None:
|
||||
return ""
|
||||
else:
|
||||
return unquote(val).strip('\"')
|
||||
df = spark.read.parquet('/gscratch/comdata/output/wikiq_enwiki_20200301_nathante.parquet')
|
||||
df = df.withColumnRenamed("anon","anonRaw")
|
||||
df = df.withColumn("anon",f.when(f.col("anonRaw")=="TRUE",True).otherwise(False))
|
||||
df = df.drop("anonRaw")
|
||||
df = df.withColumnRenamed("text_chars","text_chars_raw")
|
||||
df = df.withColumn("text_chars",f.col("text_chars_raw").cast('int'))
|
||||
df = df.drop("text_chars_raw")
|
||||
df = df.withColumnRenamed("editor_id",'editor_id_raw')
|
||||
df = df.withColumn("editor_id",f.col("editor_id_raw").cast("int"))
|
||||
df = df.drop("editor_id_raw")
|
||||
df = df.withColumnRenamed("revert","revert_raw")
|
||||
df = df.withColumn("revert",f.when(f.col("revert_raw")=="TRUE",True).otherwise(False))
|
||||
df = df.drop("revert_raw")
|
||||
df = df.withColumnRenamed("title","title_raw")
|
||||
df = df.withColumn("title", decode_strip_udf(f.col("title_raw")))
|
||||
df = df.drop("title_raw")
|
||||
df = df.withColumnRenamed("editor","editor_raw")
|
||||
df = df.withColumn("editor", decode_strip_udf(f.col("editor_raw")))
|
||||
df = df.drop("editor_raw")
|
||||
df = df.repartition(400,'articleid')
|
||||
df.write.parquet("/gscratch/comdata/output/wikiq_enwiki_20200301_nathante_partitioned.parquet",mode='overwrite')
|
||||
|
||||
@unique
|
||||
class WP10(IntEnum):
|
||||
start = 1
|
||||
stub = 2
|
||||
c = 3
|
||||
b = 4
|
||||
a = 5
|
||||
ga = 6
|
||||
fa = 7
|
||||
|
||||
@staticmethod
|
||||
def from_string(s):
|
||||
return {'start':WP10.start,
|
||||
'stub':WP10.stub,
|
||||
'c':WP10.c,
|
||||
'b':WP10.b,
|
||||
'a':WP10.a,
|
||||
'ga':WP10.ga,
|
||||
'fa':WP10.fa}.get(s,None)
|
||||
|
||||
def to_string(self):
|
||||
return {WP10.start:'start',
|
||||
WP10.stub:'stub',
|
||||
WP10.c:'c',
|
||||
WP10.b:'b',
|
||||
WP10.a:'a',
|
||||
WP10.ga:'ga',
|
||||
WP10.fa:'fa'}[self]
|
||||
|
||||
|
||||
@dataclass
|
||||
class PageLabel:
|
||||
timestamp:datetime
|
||||
wp10:WP10
|
||||
|
||||
@staticmethod
|
||||
def from_json(obj):
|
||||
timestamp = obj.get('timestamp',None)
|
||||
if timestamp is not None:
|
||||
timestamp = datetime.strptime(obj['timestamp'],'%Y%m%d%H%M%S')
|
||||
else:
|
||||
timestamp = None
|
||||
|
||||
return PageLabel(timestamp=timestamp,
|
||||
wp10=WP10.from_string(obj.get('wp10')))
|
||||
|
||||
@staticmethod
|
||||
def from_row(row):
|
||||
return PageLabel(timestamp = row.timestamp,
|
||||
wp10 = WP10(row.wp10))
|
||||
|
||||
def to_json(self):
|
||||
d = asdict(self)
|
||||
|
||||
if self.timestamp is not None:
|
||||
d['timestamp'] = self.timestamp.strftime('%Y%m%d%H%M%S')
|
||||
|
||||
if self.wp10 is not None:
|
||||
d['wp10'] = self.wp10.to_string()
|
||||
|
||||
return json.dumps(d)
|
||||
|
||||
@dataclass
|
||||
class TalkPageLabel(PageLabel):
|
||||
dump_talk_page_title:str
|
||||
talk_page_id:int
|
||||
project:str
|
||||
|
||||
@staticmethod
|
||||
def from_json(obj):
|
||||
res = PageLabel.from_json(obj)
|
||||
|
||||
return TalkPageLabel(dump_talk_page_title=obj.get('dump_talk_page_title',None),
|
||||
talk_page_id=obj.get('talk_page_id',None),
|
||||
project=obj.get("project",None),
|
||||
**asdict(res)
|
||||
)
|
||||
@staticmethod
|
||||
def from_row(row):
|
||||
res = PageLabel.from_row(row)
|
||||
return TalkPageLabel(dump_talk_page_title = row.dump_talk_page_title,
|
||||
talk_page_id = row.talk_page_id,
|
||||
project = row.project
|
||||
**asdict(res))
|
||||
|
||||
|
||||
|
||||
@dataclass
|
||||
class ArticlePageLabel(PageLabel):
|
||||
'''class representing labels to a page'''
|
||||
title: str
|
||||
articleid: int
|
||||
revid:int
|
||||
|
||||
@staticmethod
|
||||
def from_json(obj):
|
||||
res = PageLabel.from_json(obj)
|
||||
|
||||
return ArticlePageLabel(title=obj.get('title',None),
|
||||
articleid=obj.get('articleid',None),
|
||||
**asdict(res)
|
||||
)
|
||||
|
||||
@staticmethod
|
||||
def from_row(row):
|
||||
res = PageLabel.from_row(row)
|
||||
return ArticlePageLabel(title = row.title,
|
||||
articleid = row.articleid,
|
||||
revid = row.revid,
|
||||
**asdict(res))
|
||||
|
||||
infiles="enwiki-20200301-pages-meta-history*.xml-p*.7z_article_labelings.json"; samplesize=5000*7
|
||||
|
||||
def main(infiles="enwiki-20200301-pages-meta-history*.xml-p*.7z_article_labelings.json", samplesize=5000*7):
|
||||
path = Path('data')
|
||||
infiles = path.glob(infiles)
|
||||
|
||||
pool = Pool(28)
|
||||
|
||||
lines = chain(* map(lambda f: open(f,'r'), infiles))
|
||||
|
||||
parsed = pool.imap_unordered(json.loads, lines, chunksize=int(1e3))
|
||||
formatted = pool.imap_unordered(TalkPageLabel.from_json, parsed, chunksize=int(1e3))
|
||||
dicted = pool.imap_unordered(asdict,formatted, chunksize=int(1e3))
|
||||
|
||||
# data frame of the the latest labels.
|
||||
df = pd.DataFrame(dicted)
|
||||
|
||||
df = df.loc[df.timestamp <= datetime(2019,1,1)]
|
||||
|
||||
groups = df.groupby(["talk_page_id"])
|
||||
max_labels = groups.wp10.max().reset_index()
|
||||
|
||||
df2 = pd.merge(df,max_labels,on=['talk_page_id','wp10'],how='right')
|
||||
last_timestamp = df2.groupby(['talk_page_id']).timestamp.max().reset_index()
|
||||
|
||||
df2 = pd.merge(df2, last_timestamp, on=['talk_page_id','timestamp'], how='right')
|
||||
first_project = df2.groupby(['talk_page_id']).project.first()
|
||||
df2 = pd.merge(df2, first_project,on=['talk_page_id','project'], how='right')
|
||||
|
||||
tpid = df2
|
||||
|
||||
#.wp10.max().reset_index()
|
||||
tpid = tpid.loc[~tpid.dump_talk_page_title.isna()]
|
||||
|
||||
# pick out just the samples we want.
|
||||
spark = SparkSession.builder.getOrCreate()
|
||||
|
||||
sparkdf = spark.read.parquet("/gscratch/comdata/output/wikiq_enwiki_20200301_nathante_partitioned.parquet")
|
||||
|
||||
tpid['timestamp'] = tpid['timestamp'].dt.tz_localize('utc')
|
||||
labels = spark.createDataFrame(tpid)
|
||||
talks = sparkdf.filter(sparkdf.namespace==1)
|
||||
articles = sparkdf.filter(sparkdf.namespace==0)
|
||||
|
||||
# labels = labels.join(talks,on=[labels.talk_page_id == talks.articleid],how='left_outer')
|
||||
|
||||
talks = talks.join(labels,on=[labels.talk_page_id == talks.articleid])
|
||||
|
||||
#talks.filter(talks.wp10==7).select('talk_page_id').distinct().count()
|
||||
|
||||
talks = talks.withColumn('timediff', f.datediff(talks.timestamp, talks.date_time))
|
||||
|
||||
talks = talks.filter(talks.timediff <= 0)
|
||||
|
||||
win = Window.partitionBy("talk_page_id")
|
||||
talks = talks.withColumn('best_timediff', f.max('timediff').over(win))
|
||||
talks = talks.filter(talks.timediff == talks.best_timediff)
|
||||
|
||||
talks = talks.withColumn('article_title',f.substring_index(f.col("title"),':',-1))
|
||||
talks = talks.select(['article_title','wp10',f.col('timestamp').alias('timestamp'),'talk_page_id']).distinct()
|
||||
|
||||
articles = articles.join(talks,on=[talks.article_title == articles.title])
|
||||
|
||||
articles = articles.withColumn('timediff', f.datediff(articles.timestamp, articles.date_time))
|
||||
articles = articles.filter(articles.timediff <= 0)
|
||||
|
||||
win2 = Window.partitionBy("articleid")
|
||||
articles = articles.filter(f.col("revert")==False)
|
||||
articles = articles.withColumn('best_timediff', f.max('timediff').over(win2))
|
||||
articles = articles.filter(articles.timediff == articles.best_timediff)
|
||||
articles = articles.select(['revid','timestamp','wp10','articleid','title'])
|
||||
|
||||
articles = articles.groupby(['timestamp','wp10','articleid','title']).agg(f.first(f.col("revid")).alias("revid"))
|
||||
|
||||
articles.write.parquet("data/article_quality_data.parquet",mode='overwrite')
|
||||
|
||||
tpid = pd.read_parquet("data/article_quality_data.parquet")
|
||||
|
||||
# we want to sample /papges/ not /labels/.
|
||||
# so we need to do a /full/ groupby pages.
|
||||
# this is why we have a lot of RAM!
|
||||
# we need the number of
|
||||
label_counts = {}
|
||||
sample_page_ids = {}
|
||||
label_max_samplesize = int(samplesize / len(WP10))
|
||||
sample_chunks = []
|
||||
|
||||
for lab in WP10:
|
||||
print(lab)
|
||||
page_ids = tpid.loc[tpid.wp10==lab].articleid
|
||||
label_counts[lab] = len(page_ids)
|
||||
print(lab,label_counts)
|
||||
if(label_counts[lab] <= label_max_samplesize):
|
||||
sample_page_ids[lab] = page_ids
|
||||
else:
|
||||
sample_page_ids[lab] = random.choice(page_ids,label_max_samplesize,replace=False)
|
||||
|
||||
# get the labels for each sampled article
|
||||
sample_data_lab = tpid.loc[(tpid.articleid.isin(sample_page_ids[lab]))]
|
||||
|
||||
sample_chunks.append(sample_data_lab)
|
||||
|
||||
remember = Remember(f='remember_sample_quality_labels.RDS')
|
||||
|
||||
remember(label_max_samplesize, 'label_max_samplesize')
|
||||
|
||||
|
||||
# Note that different wikiprojects can have different labels
|
||||
sample = pd.concat(sample_chunks,ignore_index=True)
|
||||
|
||||
revisions_per_article = sparkdf.filter(sparkdf.namespace==0).select(['revid','articleid','date_time','title'])
|
||||
revisions_per_article = revisions_per_article.filter(f.col("date_time") >= datetime(2019,1,1))
|
||||
revisions_per_article = revisions_per_article.filter(f.col("date_time") <= datetime(2019,12,31))
|
||||
revisions_per_article = revisions_per_article.groupby(["articleid",'title']).count().toPandas()
|
||||
|
||||
revisions_per_article['title'] = revisions_per_article.title.apply(lambda s: unquote(s).strip('\"'))
|
||||
|
||||
revisions_per_article = pd.merge(revisions_per_article,tpid,left_on='articleid',right_on='articleid')
|
||||
|
||||
revisions_per_class = revisions_per_article.groupby('wp10').agg({'count':'sum'}).reset_index()
|
||||
revisions_per_class['wp10'] = revisions_per_class.wp10.apply(lambda s: WP10(s).to_string())
|
||||
|
||||
label_counts = pd.DataFrame({'wp10':map(lambda x: x.to_string(),label_counts.keys()),'n_articles':label_counts.values()})
|
||||
label_counts = pd.merge(label_counts,revisions_per_class,left_on='wp10',right_on='wp10')
|
||||
label_counts = label_counts.rename(columns={'count':'n_revisions'})
|
||||
|
||||
remember(label_counts, 'label_sample_counts')
|
||||
|
||||
sample.to_feather("data/20200301_article_labelings_sample.feather")
|
||||
|
||||
sample = pd.read_feather("data/20200301_article_labelings_sample.feather")
|
||||
sample_counts = sample.articleid.groupby(sample.wp10).count().reset_index()
|
||||
remember(sample_counts,'sample_counts')
|
||||
|
||||
sample_labels = sample.apply(ArticlePageLabel.from_row,axis=1)
|
||||
sample_labels = map(PageLabel.to_json, sample_labels)
|
||||
|
||||
with open("data/20200301_article_labelings_sample.json",'w') as of:
|
||||
of.writelines((l + '\n' for l in sample_labels))
|
||||
|
||||
pool.close()
|
||||
|
||||
if __name__ == "__main__":
|
||||
fire.Fire(main)
|
||||
|
||||
1
score_sample_articles.RDS
Symbolic link
1
score_sample_articles.RDS
Symbolic link
@@ -0,0 +1 @@
|
||||
.git/annex/objects/J8/FP/SHA256E-s123--ca8ebf4d8748b52e9edeca96f14f4132042c8039a4d6376ffa87033adc36d8cb.RDS/SHA256E-s123--ca8ebf4d8748b52e9edeca96f14f4132042c8039a4d6376ffa87033adc36d8cb.RDS
|
||||
573
wikiq
Executable file
573
wikiq
Executable file
@@ -0,0 +1,573 @@
|
||||
#!/usr/bin/env python3
|
||||
|
||||
# original wikiq headers are: title articleid revid date_time anon
|
||||
# editor editor_id minor text_size text_entropy text_md5 reversion
|
||||
# additions_size deletions_size
|
||||
|
||||
import argparse
|
||||
import sys
|
||||
import os, os.path
|
||||
import re
|
||||
|
||||
from subprocess import Popen, PIPE
|
||||
from collections import deque
|
||||
from hashlib import sha1
|
||||
|
||||
from mwxml import Dump
|
||||
|
||||
from deltas.tokenizers import wikitext_split
|
||||
import mwpersistence
|
||||
import mwreverts
|
||||
from urllib.parse import quote
|
||||
TO_ENCODE = ('title', 'editor')
|
||||
PERSISTENCE_RADIUS=7
|
||||
from deltas import SequenceMatcher
|
||||
from deltas import SegmentMatcher
|
||||
|
||||
class PersistMethod:
|
||||
none = 0
|
||||
sequence = 1
|
||||
segment = 2
|
||||
legacy = 3
|
||||
|
||||
def calculate_persistence(tokens_added):
|
||||
return(sum([(len(x.revisions)-1) for x in tokens_added]),
|
||||
len(tokens_added))
|
||||
|
||||
|
||||
class WikiqIterator():
|
||||
def __init__(self, fh, collapse_user=False):
|
||||
self.fh = fh
|
||||
self.collapse_user = collapse_user
|
||||
self.mwiterator = Dump.from_file(self.fh)
|
||||
self.namespace_map = { ns.id : ns.name for ns in
|
||||
self.mwiterator.site_info.namespaces }
|
||||
self.__pages = self.load_pages()
|
||||
|
||||
def load_pages(self):
|
||||
for page in self.mwiterator:
|
||||
yield WikiqPage(page,
|
||||
namespace_map = self.namespace_map,
|
||||
collapse_user=self.collapse_user)
|
||||
|
||||
def __iter__(self):
|
||||
return self.__pages
|
||||
|
||||
def __next__(self):
|
||||
return next(self._pages)
|
||||
|
||||
class WikiqPage():
|
||||
__slots__ = ('id', 'title', 'namespace', 'redirect',
|
||||
'restrictions', 'mwpage', '__revisions',
|
||||
'collapse_user')
|
||||
|
||||
def __init__(self, page, namespace_map, collapse_user=False):
|
||||
self.id = page.id
|
||||
self.namespace = page.namespace
|
||||
# following mwxml, we assume namespace 0 in cases where
|
||||
# page.namespace is inconsistent with namespace_map
|
||||
if page.namespace not in namespace_map:
|
||||
self.title = page.title
|
||||
page.namespace = 0
|
||||
if page.namespace != 0:
|
||||
self.title = ':'.join([namespace_map[page.namespace], page.title])
|
||||
else:
|
||||
self.title = page.title
|
||||
self.restrictions = page.restrictions
|
||||
self.collapse_user = collapse_user
|
||||
self.mwpage = page
|
||||
self.__revisions = self.rev_list()
|
||||
|
||||
def rev_list(self):
|
||||
# Outline for how we want to handle collapse_user=True
|
||||
# iteration rev.user prev_rev.user add prev_rev?
|
||||
# 0 A None Never
|
||||
# 1 A A False
|
||||
# 2 B A True
|
||||
# 3 A B True
|
||||
# 4 A A False
|
||||
# Post-loop A Always
|
||||
for i, rev in enumerate(self.mwpage):
|
||||
# never yield the first time
|
||||
if i == 0:
|
||||
if self.collapse_user:
|
||||
collapsed_revs = 1
|
||||
rev.collapsed_revs = collapsed_revs
|
||||
|
||||
else:
|
||||
if self.collapse_user:
|
||||
# yield if this is the last edit in a seq by a user and reset
|
||||
# also yield if we do know who the user is
|
||||
|
||||
if rev.deleted.user or prev_rev.deleted.user:
|
||||
yield prev_rev
|
||||
collapsed_revs = 1
|
||||
rev.collapsed_revs = collapsed_revs
|
||||
|
||||
elif not rev.user.text == prev_rev.user.text:
|
||||
yield prev_rev
|
||||
collapsed_revs = 1
|
||||
rev.collapsed_revs = collapsed_revs
|
||||
# otherwise, add one to the counter
|
||||
else:
|
||||
collapsed_revs += 1
|
||||
rev.collapsed_revs = collapsed_revs
|
||||
# if collapse_user is false, we always yield
|
||||
else:
|
||||
yield prev_rev
|
||||
|
||||
prev_rev = rev
|
||||
|
||||
# also yield the final time
|
||||
yield prev_rev
|
||||
|
||||
def __iter__(self):
|
||||
return self.__revisions
|
||||
|
||||
def __next__(self):
|
||||
return next(self.__revisions)
|
||||
|
||||
|
||||
class RegexPair(object):
|
||||
def __init__(self, pattern, label):
|
||||
self.pattern = re.compile(pattern)
|
||||
self.label = label
|
||||
self.has_groups = bool(self.pattern.groupindex)
|
||||
if self.has_groups:
|
||||
self.capture_groups = list(self.pattern.groupindex.keys())
|
||||
|
||||
def _make_key(self, cap_group):
|
||||
return ("{}_{}".format(self.label, cap_group))
|
||||
|
||||
def matchmake(self, content, rev_data):
|
||||
|
||||
temp_dict = {}
|
||||
# if there are named capture groups in the regex
|
||||
if self.has_groups:
|
||||
|
||||
# if there are matches of some sort in this revision content, fill the lists for each cap_group
|
||||
if self.pattern.search(content) is not None:
|
||||
m = self.pattern.finditer(content)
|
||||
matchobjects = list(m)
|
||||
|
||||
for cap_group in self.capture_groups:
|
||||
key = self._make_key(cap_group)
|
||||
temp_list = []
|
||||
for match in matchobjects:
|
||||
# we only want to add the match for the capture group if the match is not None
|
||||
if match.group(cap_group) != None:
|
||||
temp_list.append(match.group(cap_group))
|
||||
|
||||
# if temp_list of matches is empty just make that column None
|
||||
if len(temp_list)==0:
|
||||
temp_dict[key] = None
|
||||
# else we put in the list we made in the for-loop above
|
||||
else:
|
||||
temp_dict[key] = ', '.join(temp_list)
|
||||
|
||||
# there are no matches at all in this revision content, we default values to None
|
||||
else:
|
||||
for cap_group in self.capture_groups:
|
||||
key = self._make_key(cap_group)
|
||||
temp_dict[key] = None
|
||||
|
||||
# there are no capture groups, we just search for all the matches of the regex
|
||||
else:
|
||||
#given that there are matches to be made
|
||||
if self.pattern.search(content) is not None:
|
||||
m = self.pattern.findall(content)
|
||||
temp_dict[self.label] = ', '.join(m)
|
||||
else:
|
||||
temp_dict[self.label] = None
|
||||
# update rev_data with our new columns
|
||||
rev_data.update(temp_dict)
|
||||
return rev_data
|
||||
|
||||
|
||||
class WikiqParser():
|
||||
def __init__(self, input_file, output_file, regex_match_revision, regex_match_comment, regex_revision_label, regex_comment_label, collapse_user=False, persist=None, urlencode=False, namespaces = None, revert_radius=15):
|
||||
"""
|
||||
Parameters:
|
||||
persist : what persistence method to use. Takes a PersistMethod value
|
||||
"""
|
||||
self.input_file = input_file
|
||||
self.output_file = output_file
|
||||
self.collapse_user = collapse_user
|
||||
self.persist = persist
|
||||
self.printed_header = False
|
||||
self.namespaces = []
|
||||
self.urlencode = urlencode
|
||||
self.revert_radius = revert_radius
|
||||
|
||||
if namespaces is not None:
|
||||
self.namespace_filter = set(namespaces)
|
||||
else:
|
||||
self.namespace_filter = None
|
||||
|
||||
self.regex_revision_pairs = self.make_matchmake_pairs(regex_match_revision, regex_revision_label)
|
||||
self.regex_comment_pairs = self.make_matchmake_pairs(regex_match_comment, regex_comment_label)
|
||||
|
||||
|
||||
def make_matchmake_pairs(self, patterns, labels):
|
||||
if (patterns is not None and labels is not None) and \
|
||||
(len(patterns) == len(labels)):
|
||||
return [RegexPair(pattern, label) for pattern, label in zip(patterns, labels)]
|
||||
elif (patterns is None and labels is None):
|
||||
return []
|
||||
else:
|
||||
sys.exit('Each regular expression *must* come with a corresponding label and vice versa.')
|
||||
|
||||
def matchmake(self, rev, rev_data):
|
||||
rev_data = self.matchmake_revision(rev.text, rev_data)
|
||||
rev_data = self.matchmake_comment(rev.comment, rev_data)
|
||||
return rev_data
|
||||
|
||||
def matchmake_revision(self, text, rev_data):
|
||||
return self.matchmake_pairs(text, rev_data, self.regex_revision_pairs)
|
||||
|
||||
def matchmake_comment(self, comment, rev_data):
|
||||
return self.matchmake_pairs(comment, rev_data, self.regex_comment_pairs)
|
||||
|
||||
def matchmake_pairs(self, text, rev_data, pairs):
|
||||
for pair in pairs:
|
||||
rev_data = pair.matchmake(text, rev_data)
|
||||
return rev_data
|
||||
|
||||
def __get_namespace_from_title(self, title):
|
||||
default_ns = None
|
||||
|
||||
for ns in self.namespaces:
|
||||
# skip if the namespace is not defined
|
||||
if ns == None:
|
||||
default_ns = self.namespaces[ns]
|
||||
continue
|
||||
|
||||
if title.startswith(ns + ":"):
|
||||
return self.namespaces[ns]
|
||||
|
||||
# if we've made it this far with no matches, we return the default namespace
|
||||
return default_ns
|
||||
|
||||
|
||||
def process(self):
|
||||
|
||||
# create a regex that creates the output filename
|
||||
# output_filename = re.sub(r'^.*/(enwiki\-\d+)\-.*p(\d+)p.*$',
|
||||
# r'output/wikiq-\1-\2.tsv',
|
||||
# input_filename)
|
||||
|
||||
# Construct dump file iterator
|
||||
dump = WikiqIterator(self.input_file, collapse_user=self.collapse_user)
|
||||
|
||||
# extract list of namspaces
|
||||
self.namespaces = {ns.name : ns.id for ns in dump.mwiterator.site_info.namespaces}
|
||||
|
||||
page_count = 0
|
||||
rev_count = 0
|
||||
|
||||
|
||||
# Iterate through pages
|
||||
for page in dump:
|
||||
namespace = page.namespace if page.namespace is not None else self.__get_namespace_from_title(page.title)
|
||||
|
||||
# skip namespaces not in the filter
|
||||
if self.namespace_filter is not None:
|
||||
if namespace not in self.namespace_filter:
|
||||
continue
|
||||
|
||||
rev_detector = mwreverts.Detector(radius = self.revert_radius)
|
||||
|
||||
if self.persist != PersistMethod.none:
|
||||
window = deque(maxlen=PERSISTENCE_RADIUS)
|
||||
|
||||
if self.persist == PersistMethod.sequence:
|
||||
state = mwpersistence.DiffState(SequenceMatcher(tokenizer = wikitext_split),
|
||||
revert_radius=PERSISTENCE_RADIUS)
|
||||
|
||||
elif self.persist == PersistMethod.segment:
|
||||
state = mwpersistence.DiffState(SegmentMatcher(tokenizer = wikitext_split),
|
||||
revert_radius=PERSISTENCE_RADIUS)
|
||||
|
||||
# self.persist == PersistMethod.legacy
|
||||
else:
|
||||
from mw.lib import persistence
|
||||
state = persistence.State()
|
||||
|
||||
# Iterate through a page's revisions
|
||||
for rev in page:
|
||||
|
||||
# initialize rev_data
|
||||
rev_data = {
|
||||
'revid':rev.id,
|
||||
'date_time' : rev.timestamp.strftime('%Y-%m-%d %H:%M:%S'),
|
||||
'articleid' : page.id,
|
||||
'editor_id' : "" if rev.deleted.user == True or rev.user.id is None else rev.user.id,
|
||||
'title' : '"' + page.title + '"',
|
||||
'namespace' : namespace,
|
||||
'deleted' : "TRUE" if rev.deleted.text else "FALSE"
|
||||
}
|
||||
|
||||
rev_data = self.matchmake(rev, rev_data)
|
||||
|
||||
# if revisions are deleted, /many/ things will be missing
|
||||
if rev.deleted.text:
|
||||
rev_data['text_chars'] = ""
|
||||
rev_data['sha1'] = ""
|
||||
rev_data['revert'] = ""
|
||||
rev_data['reverteds'] = ""
|
||||
|
||||
else:
|
||||
# rev.text can be None if the page has no text
|
||||
if not rev.text:
|
||||
rev.text = ""
|
||||
# if text exists, we'll check for a sha1 and generate one otherwise
|
||||
|
||||
if rev.sha1:
|
||||
text_sha1 = rev.sha1
|
||||
else:
|
||||
|
||||
text_sha1 = sha1(bytes(rev.text, "utf8")).hexdigest()
|
||||
|
||||
rev_data['sha1'] = text_sha1
|
||||
|
||||
# TODO rev.bytes doesn't work.. looks like a bug
|
||||
rev_data['text_chars'] = len(rev.text)
|
||||
|
||||
# generate revert data
|
||||
revert = rev_detector.process(text_sha1, rev.id)
|
||||
|
||||
if revert:
|
||||
rev_data['revert'] = "TRUE"
|
||||
rev_data['reverteds'] = '"' + ",".join([str(x) for x in revert.reverteds]) + '"'
|
||||
else:
|
||||
rev_data['revert'] = "FALSE"
|
||||
rev_data['reverteds'] = ""
|
||||
|
||||
# if the fact that the edit was minor can be hidden, this might be an issue
|
||||
rev_data['minor'] = "TRUE" if rev.minor else "FALSE"
|
||||
|
||||
if not rev.deleted.user:
|
||||
# wrap user-defined editors in quotes for fread
|
||||
rev_data['editor'] = '"' + rev.user.text + '"'
|
||||
rev_data['anon'] = "TRUE" if rev.user.id == None else "FALSE"
|
||||
|
||||
else:
|
||||
rev_data['anon'] = ""
|
||||
rev_data['editor'] = ""
|
||||
|
||||
#if re.match(r'^#redirect \[\[.*\]\]', rev.text, re.I):
|
||||
# redirect = True
|
||||
#else:
|
||||
# redirect = False
|
||||
|
||||
#TODO missing: additions_size deletions_size
|
||||
|
||||
# if collapse user was on, lets run that
|
||||
if self.collapse_user:
|
||||
rev_data['collapsed_revs'] = rev.collapsed_revs
|
||||
|
||||
if self.persist != PersistMethod.none:
|
||||
if rev.deleted.text:
|
||||
for k in ["token_revs", "tokens_added", "tokens_removed", "tokens_window"]:
|
||||
old_rev_data[k] = None
|
||||
else:
|
||||
|
||||
if self.persist != PersistMethod.legacy:
|
||||
_, tokens_added, tokens_removed = state.update(rev.text, rev.id)
|
||||
|
||||
else:
|
||||
_, tokens_added, tokens_removed = state.process(rev.text, rev.id, text_sha1)
|
||||
|
||||
window.append((rev.id, rev_data, tokens_added, tokens_removed))
|
||||
|
||||
if len(window) == PERSISTENCE_RADIUS:
|
||||
old_rev_id, old_rev_data, old_tokens_added, old_tokens_removed = window[0]
|
||||
|
||||
num_token_revs, num_tokens = calculate_persistence(old_tokens_added)
|
||||
|
||||
old_rev_data["token_revs"] = num_token_revs
|
||||
old_rev_data["tokens_added"] = num_tokens
|
||||
old_rev_data["tokens_removed"] = len(old_tokens_removed)
|
||||
old_rev_data["tokens_window"] = PERSISTENCE_RADIUS-1
|
||||
|
||||
self.print_rev_data(old_rev_data)
|
||||
|
||||
else:
|
||||
self.print_rev_data(rev_data)
|
||||
|
||||
rev_count += 1
|
||||
|
||||
if self.persist != PersistMethod.none:
|
||||
# print out metadata for the last RADIUS revisions
|
||||
for i, item in enumerate(window):
|
||||
# if the window was full, we've already printed item 0
|
||||
if len(window) == PERSISTENCE_RADIUS and i == 0:
|
||||
continue
|
||||
|
||||
rev_id, rev_data, tokens_added, tokens_removed = item
|
||||
num_token_revs, num_tokens = calculate_persistence(tokens_added)
|
||||
|
||||
rev_data["token_revs"] = num_token_revs
|
||||
rev_data["tokens_added"] = num_tokens
|
||||
rev_data["tokens_removed"] = len(tokens_removed)
|
||||
rev_data["tokens_window"] = len(window)-(i+1)
|
||||
|
||||
self.print_rev_data(rev_data)
|
||||
|
||||
page_count += 1
|
||||
|
||||
print("Done: %s revisions and %s pages." % (rev_count, page_count),
|
||||
file=sys.stderr)
|
||||
|
||||
def print_rev_data(self, rev_data):
|
||||
# if it's the first time through, print the header
|
||||
if self.urlencode:
|
||||
for field in TO_ENCODE:
|
||||
rev_data[field] = quote(str(rev_data[field]))
|
||||
|
||||
if not self.printed_header:
|
||||
print("\t".join([str(k) for k in sorted(rev_data.keys())]), file=self.output_file)
|
||||
self.printed_header = True
|
||||
|
||||
print("\t".join([str(v) for k, v in sorted(rev_data.items())]), file=self.output_file)
|
||||
|
||||
|
||||
def open_input_file(input_filename):
|
||||
if re.match(r'.*\.7z$', input_filename):
|
||||
cmd = ["7za", "x", "-so", input_filename, '*']
|
||||
elif re.match(r'.*\.gz$', input_filename):
|
||||
cmd = ["zcat", input_filename]
|
||||
elif re.match(r'.*\.bz2$', input_filename):
|
||||
cmd = ["bzcat", "-dk", input_filename]
|
||||
|
||||
try:
|
||||
input_file = Popen(cmd, stdout=PIPE).stdout
|
||||
except NameError:
|
||||
input_file = open(input_filename, 'r')
|
||||
|
||||
return input_file
|
||||
|
||||
def open_output_file(input_filename):
|
||||
# create a regex that creates the output filename
|
||||
output_filename = re.sub(r'\.(7z|gz|bz2)?$', '', input_filename)
|
||||
output_filename = re.sub(r'\.xml', '', output_filename)
|
||||
output_filename = output_filename + ".tsv"
|
||||
output_file = open(output_filename, "w")
|
||||
|
||||
return output_file
|
||||
|
||||
parser = argparse.ArgumentParser(description='Parse MediaWiki XML database dumps into tab delimitted data.')
|
||||
|
||||
# arguments for the input direction
|
||||
parser.add_argument('dumpfiles', metavar="DUMPFILE", nargs="*", type=str,
|
||||
help="Filename of the compressed or uncompressed XML database dump. If absent, we'll look for content on stdin and output on stdout.")
|
||||
|
||||
parser.add_argument('-o', '--output-dir', metavar='DIR', dest='output_dir', type=str, nargs=1,
|
||||
help="Directory for output files.")
|
||||
|
||||
parser.add_argument('-s', '--stdout', dest="stdout", action="store_true",
|
||||
help="Write output to standard out (do not create dump file)")
|
||||
|
||||
parser.add_argument('--collapse-user', dest="collapse_user", action="store_true",
|
||||
help="Operate only on the final revision made by user a user within all sequences of consecutive edits made by a user. This can be useful for addressing issues with text persistence measures.")
|
||||
|
||||
parser.add_argument('-p', '--persistence', dest="persist", default=None, const='', type=str, choices = ['','segment','sequence','legacy'], nargs='?',
|
||||
help="Compute and report measures of content persistent: (1) persistent token revisions, (2) tokens added, and (3) number of revision used in computing the first measure. This may by slow. The defualt is -p=sequence, which uses the same algorithm as in the past, but with improvements to wikitext parsing. Use -p=legacy for old behavior used in older research projects. Use -p=segment for advanced persistence calculation method that is robust to content moves, but prone to bugs, and slower.")
|
||||
|
||||
parser.add_argument('-u', '--url-encode', dest="urlencode", action="store_true",
|
||||
help="Output url encoded text strings. This works around some data issues like newlines in editor names. In the future it may be used to output other text data.")
|
||||
|
||||
parser.add_argument('-n', '--namespace-include', dest="namespace_filter", type=int, action='append',
|
||||
help="Id number of namspace to include. Can be specified more than once.")
|
||||
|
||||
parser.add_argument('-rr',
|
||||
'--revert-radius',
|
||||
dest="revert_radius",
|
||||
type=int,
|
||||
action='store',
|
||||
default=15,
|
||||
help="Number of edits to check when looking for reverts (default: 15)")
|
||||
|
||||
parser.add_argument('-RP', '--revision-pattern', dest="regex_match_revision", default=None, type=str, action='append',
|
||||
help="The regular expression to search for in revision text. The regex must be surrounded by quotes.")
|
||||
|
||||
parser.add_argument('-RPl', '--revision-pattern-label', dest="regex_revision_label", default=None, type=str, action='append',
|
||||
help="The label for the outputted column based on matching the regex in revision text.")
|
||||
|
||||
parser.add_argument('-CP', '--comment-pattern', dest="regex_match_comment", default=None, type=str, action='append',
|
||||
help="The regular expression to search for in comments of revisions.")
|
||||
|
||||
parser.add_argument('-CPl', '--comment-pattern-label', dest="regex_comment_label", default=None, type=str, action='append',
|
||||
help="The label for the outputted column based on matching the regex in comments.")
|
||||
|
||||
args = parser.parse_args()
|
||||
|
||||
# set persistence method
|
||||
|
||||
if args.persist is None:
|
||||
persist = PersistMethod.none
|
||||
elif args.persist == "segment":
|
||||
persist = PersistMethod.segment
|
||||
elif args.persist == "legacy":
|
||||
persist = PersistMethod.legacy
|
||||
else:
|
||||
persist = PersistMethod.sequence
|
||||
|
||||
if args.namespace_filter is not None:
|
||||
namespaces = args.namespace_filter
|
||||
else:
|
||||
namespaces = None
|
||||
|
||||
if len(args.dumpfiles) > 0:
|
||||
for filename in args.dumpfiles:
|
||||
input_file = open_input_file(filename)
|
||||
|
||||
# open directory for output
|
||||
if args.output_dir:
|
||||
output_dir = args.output_dir[0]
|
||||
else:
|
||||
output_dir = "."
|
||||
|
||||
print("Processing file: %s" % filename, file=sys.stderr)
|
||||
|
||||
if args.stdout:
|
||||
output_file = sys.stdout
|
||||
else:
|
||||
filename = os.path.join(output_dir, os.path.basename(filename))
|
||||
output_file = open_output_file(filename)
|
||||
|
||||
wikiq = WikiqParser(input_file,
|
||||
output_file,
|
||||
collapse_user=args.collapse_user,
|
||||
persist=persist,
|
||||
urlencode=args.urlencode,
|
||||
namespaces=namespaces,
|
||||
revert_radius=args.revert_radius,
|
||||
regex_match_revision = args.regex_match_revision,
|
||||
regex_revision_label = args.regex_revision_label,
|
||||
regex_match_comment = args.regex_match_comment,
|
||||
regex_comment_label = args.regex_comment_label)
|
||||
|
||||
wikiq.process()
|
||||
|
||||
# close things
|
||||
input_file.close()
|
||||
output_file.close()
|
||||
else:
|
||||
wikiq = WikiqParser(sys.stdin,
|
||||
sys.stdout,
|
||||
collapse_user=args.collapse_user,
|
||||
persist=persist,
|
||||
#persist_legacy=args.persist_legacy,
|
||||
urlencode=args.urlencode,
|
||||
namespaces=namespaces,
|
||||
revert_radius=args.revert_radius,
|
||||
regex_match_revision = args.regex_match_revision,
|
||||
regex_revision_label = args.regex_revision_label,
|
||||
regex_match_comment = args.regex_match_comment,
|
||||
regex_comment_label = args.regex_comment_label)
|
||||
|
||||
wikiq.process()
|
||||
|
||||
# stop_words = "a,able,about,across,after,all,almost,also,am,among,an,and,any,are,as,at,be,because,been,but,by,can,cannot,could,dear,did,do,does,either,else,ever,every,for,from,get,got,had,has,have,he,her,hers,him,his,how,however,i,if,in,into,is,it,its,just,least,let,like,likely,may,me,might,most,must,my,neither,no,nor,not,of,off,often,on,only,or,other,our,own,rather,said,say,says,she,should,since,so,some,than,that,the,their,them,then,there,these,they,this,tis,to,too,twas,us,wants,was,we,were,what,when,where,which,while,who,whom,why,will,with,would,yet,you,your"
|
||||
# stop_words = stop_words.split(",")
|
||||
61
wikiq_to_parquet.py
Normal file
61
wikiq_to_parquet.py
Normal file
@@ -0,0 +1,61 @@
|
||||
from pathlib import Path
|
||||
import pandas as pd
|
||||
from multiprocessing import Pool
|
||||
from pyspark.sql import functions as f
|
||||
from pyspark.sql import SparkSession, Window
|
||||
from pyspark.sql.functions import udf
|
||||
from pyspark.sql.types import StringType
|
||||
import csv
|
||||
|
||||
path = Path("/gscratch/comdata/users/nathante/wikiqRunning/wikiq_output/")
|
||||
outpath = Path("/gscratch/comdata/output/wikiq_enwiki_20200301_nathante_parquet/")
|
||||
files = list(map(Path,path.glob("*.tsv")))
|
||||
dumpfile = files[0]
|
||||
|
||||
def wikiq_tsv_to_parquet(dumpfile, outpath = Path("/gscratch/comdata/output/wikiq_enwiki_20200301_nathante.parquet/")):
|
||||
outfile = outpath / (dumpfile.name + ".parquet")
|
||||
outpath.mkdir(parents=True, exist_ok=True)
|
||||
_wikiq_tsv_to_parquet(dumpfile,outfile)
|
||||
|
||||
def _wikiq_tsv_to_parquet(dumpfile, outfile):
|
||||
|
||||
dtypes = {'anon': dtype('O'), 'articleid': dtype('int64'), 'deleted': dtype('bool'), 'editor': dtype('O'), 'editor_id': dtype('float64'), 'minor': dtype('bool'), 'namespace': dtype('int64'), 'revert': dtype('O'), 'reverteds': dtype('O'), 'revid': dtype('int64'), 'sha1': dtype('O'), 'text_chars': dtype('float64'), 'title': dtype('O')}
|
||||
|
||||
print(dumpfile)
|
||||
df = pd.read_csv(dumpfile,sep='\t',quoting=csv.QUOTE_NONE,error_bad_lines=False, warn_bad_lines=True,parse_dates=['date_time'],dtype=dtypes)
|
||||
|
||||
df.to_parquet(outfile)
|
||||
|
||||
with Pool(28) as pool:
|
||||
jobs = pool.imap_unordered(wikiq_tsv_to_parquet, files)
|
||||
list(jobs)
|
||||
|
||||
spark = SparkSession.builder.getOrCreate()
|
||||
|
||||
@udf(StringType())
|
||||
def decode_strip_udf(val):
|
||||
if val is None:
|
||||
return ""
|
||||
else:
|
||||
return unquote(val).strip('\"')
|
||||
df = spark.read.parquet('/gscratch/comdata/output/wikiq_enwiki_20200301_nathante.parquet')
|
||||
df = df.withColumnRenamed("anon","anonRaw")
|
||||
df = df.withColumn("anon",f.when(f.col("anonRaw")=="TRUE",True).otherwise(False))
|
||||
df = df.drop("anonRaw")
|
||||
df = df.withColumnRenamed("text_chars","text_chars_raw")
|
||||
df = df.withColumn("text_chars",f.col("text_chars_raw").cast('int'))
|
||||
df = df.drop("text_chars_raw")
|
||||
df = df.withColumnRenamed("editor_id",'editor_id_raw')
|
||||
df = df.withColumn("editor_id",f.col("editor_id_raw").cast("int"))
|
||||
df = df.drop("editor_id_raw")
|
||||
df = df.withColumnRenamed("revert","revert_raw")
|
||||
df = df.withColumn("revert",f.when(f.col("revert_raw")=="TRUE",True).otherwise(False))
|
||||
df = df.drop("revert_raw")
|
||||
df = df.withColumnRenamed("title","title_raw")
|
||||
df = df.withColumn("title", decode_strip_udf(f.col("title_raw")))
|
||||
df = df.drop("title_raw")
|
||||
df = df.withColumnRenamed("editor","editor_raw")
|
||||
df = df.withColumn("editor", decode_strip_udf(f.col("editor_raw")))
|
||||
df = df.drop("editor_raw")
|
||||
df = df.repartition(400,'articleid')
|
||||
df.write.parquet("/gscratch/comdata/output/wikiq_enwiki_20200301_nathante_partitioned.parquet",mode='overwrite')
|
||||
Reference in New Issue
Block a user