110 lines
4.5 KiB
R
110 lines
4.5 KiB
R
### EXAMPLE 1: demonstrates how measurement error can lead to a type sign error in a covariate
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### What kind of data invalidates fong + tyler?
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### Even when you have a good predictor, if it's biased against a covariate you can get the wrong sign.
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### Even when you include the proxy variable in the regression.
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### But with some ground truth and multiple imputation, you can fix it.
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library(argparser)
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library(mecor)
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library(ggplot2)
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library(data.table)
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library(filelock)
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library(arrow)
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library(Amelia)
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library(Zelig)
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library(predictionError)
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options(amelia.parallel="no",
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amelia.ncpus=1)
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setDTthreads(40)
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source("simulation_base.R")
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## SETUP:
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### we want to estimate x -> y; x is MAR
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### we have x -> k; k -> w; x -> w is used to predict x via the model w.
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### A realistic scenario is that we have an NLP model predicting something like "racial harassment" in social media comments
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### The labels x are binary, but the model provides a continuous predictor
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### simulation:
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#### how much power do we get from the model in the first place? (sweeping N and m)
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####
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## one way to do it is by adding correlation to x.obs and y that isn't in w.
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## in other words, the model is missing an important feature of x.obs that's related to y.
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simulate_data <- function(N, m, B0, Bxy, Bzy, seed, prediction_accuracy=0.73){
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set.seed(seed)
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# make w and y dependent
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z <- rbinom(N, 1, 0.5)
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x <- rbinom(N, 1, 0.5)
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ystar <- Bzy * z + Bxy * x + B0
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y <- rbinom(N,1,plogis(ystar))
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# glm(y ~ x + z, family="binomial")
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df <- data.table(x=x,y=y,ystar=ystar,z=z)
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if(m < N){
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df <- df[sample(nrow(df), m), y.obs := y]
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} else {
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df <- df[, y.obs := y]
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}
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odds.y1 <- qlogis(prediction_accuracy)
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odds.y0 <- qlogis(prediction_accuracy,lower.tail=F)
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df[y==0,w:=plogis(rlogis(.N,odds.y0))]
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df[y==1,w:=plogis(rlogis(.N,odds.y1))]
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df[,w_pred := as.integer(w > 0.5)]
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print(mean(df[x==0]$y == df[x==0]$w_pred))
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print(mean(df[x==1]$y == df[x==1]$w_pred))
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print(mean(df$w_pred == df$y))
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return(df)
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}
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parser <- arg_parser("Simulate data and fit corrected models")
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parser <- add_argument(parser, "--N", default=1000, help="number of observations of w")
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parser <- add_argument(parser, "--m", default=500, help="m the number of ground truth observations")
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parser <- add_argument(parser, "--seed", default=17, help='seed for the rng')
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parser <- add_argument(parser, "--outfile", help='output file', default='example_2.feather')
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parser <- add_argument(parser, "--y_explained_variance", help='what proportion of the variance of y can be explained?', default=0.1)
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parser <- add_argument(parser, "--prediction_accuracy", help='how accurate is the predictive model?', default=0.72)
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## parser <- add_argument(parser, "--x_bias_y1", help='how is the classifier biased when y = 1?', default=-0.75)
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## parser <- add_argument(parser, "--x_bias_y0", help='how is the classifier biased when y = 0 ?', default=0.75)
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parser <- add_argument(parser, "--Bxy", help='coefficient of x on y', default=0.3)
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parser <- add_argument(parser, "--Bzy", help='coeffficient of z on y', default=-0.3)
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parser <- add_argument(parser, "--outcome_formula", help='formula for the outcome variable', default="y~x+z")
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parser <- add_argument(parser, "--proxy_formula", help='formula for the proxy variable', default="w_pred~y")
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args <- parse_args(parser)
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B0 <- 0
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Bxy <- args$Bxy
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Bzy <- args$Bzy
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if(args$m < args$N){
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df <- simulate_data(args$N, args$m, B0, Bxy, Bzy, args$seed, args$prediction_accuracy)
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# result <- list('N'=args$N,'m'=args$m,'B0'=B0,'Bxy'=Bxy,'Bzy'=Bzy, 'seed'=args$seed, 'y_explained_variance'=args$y_explained_variance, 'prediction_accuracy'=args$prediction_accuracy, 'x_bias_y0'=args$x_bias_y0,'x_bias_y1'=args$x_bias_y1,'outcome_formula' = args$outcome_formula, 'proxy_formula' = args$proxy_formula)
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result <- list('N'=args$N,'m'=args$m,'B0'=B0,'Bxy'=Bxy,'Bzy'=Bzy, 'seed'=args$seed, 'y_explained_variance'=args$y_explained_variance, 'prediction_accuracy'=args$prediction_accuracy, 'outcome_formula' = args$outcome_formula, 'proxy_formula' = args$proxy_formula)
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outline <- run_simulation_depvar(df, result, outcome_formula = as.formula(args$outcome_formula), proxy_formula = as.formula(args$proxy_formula))
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outfile_lock <- lock(paste0(args$outfile, '_lock'),exclusive=TRUE)
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if(file.exists(args$outfile)){
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logdata <- read_feather(args$outfile)
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logdata <- rbind(logdata,as.data.table(outline),fill=TRUE)
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} else {
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logdata <- as.data.table(outline)
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}
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print(outline)
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write_feather(logdata, args$outfile)
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unlock(outfile_lock)
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}
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