## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>" ) ## ----setup-------------------------------------------------------------------- library(ATbounds) ## ----nsw-eval-options, include=FALSE------------------------------------------ knitr::opts_chunk$set(eval = FALSE, purl = FALSE) ## ----packaged-data-eval-options, include=FALSE, eval=TRUE, purl=TRUE---------- knitr::opts_chunk$set(eval = TRUE, purl = TRUE) ## ----------------------------------------------------------------------------- Y <- RHC[,"survival"] D <- RHC[,"RHC"] X <- as.matrix(RHC[,-c(1,2)]) ## ----------------------------------------------------------------------------- # Logit estimation of propensity score glm_ps <- stats::glm(D~X,family=binomial("logit")) ps <- glm_ps$fitted.values ps_treated <- ps[D==1] ps_control <- ps[D==0] # Plotting histograms of propensity scores df <- data.frame(cbind(D,ps)) colnames(df)<-c("RHC","PS") df$RHC <- as.factor(df$RHC) levels(df$RHC) <- c("No RHC (Control)", "RHC (Treated)") ggplot2::ggplot(df, ggplot2::aes(x=PS, color=RHC, fill=RHC)) + ggplot2::geom_histogram(breaks=seq(0,1,0.1),alpha=0.5,position="identity") ## ----------------------------------------------------------------------------- # ATT normalized estimation y1_att <- mean(D*Y)/mean(D) att_wgt <- ps/(1-ps) y0_att_num <- mean((1-D)*att_wgt*Y) y0_att_den <- mean((1-D)*att_wgt) y0_att <- y0_att_num/y0_att_den att_ps <- y1_att - y0_att print(att_ps) ## ----------------------------------------------------------------------------- rps <- rep(mean(D),length(D)) ## ----------------------------------------------------------------------------- att_rps <- mean(D*Y)/mean(D) - mean((1-D)*Y)/mean(1-D) print(att_rps) ## ----------------------------------------------------------------------------- Xunique <- mgcv::uniquecombs(X) # A matrix of unique rows from X print(c("no. of unique rows:", nrow(Xunique))) print(c("sample size :", nrow(X))) ## ----------------------------------------------------------------------------- summary(attbounds(Y, D, X, rps)) ## ----eval=FALSE--------------------------------------------------------------- # # Bounding ATT: sensitivity analysis # # This chunk is not evaluated by default because the analysis is time-intensive. # nhc_set <- c(5, 10, 20) # results_att <- {} # # for (hc in nhc_set){ # nhc <- ceiling(length(Y)/hc) # # for (q in c(1,2,3,4)){ # res <- attbounds(Y, D, X, rps, Q = q, n_hc = nhc) # results_att <- rbind(results_att,c(hc,q,res$est_lb,res$est_ub,res$ci_lb,res$ci_ub)) # } # } # colnames(results_att) = c("L","Q","LB","UB","CI-LB","CI-UB") # print(results_att, digits = 3) ## ----------------------------------------------------------------------------- summary(atebounds(Y, D, X, rps, Q = 1)) ## ----------------------------------------------------------------------------- summary(atebounds(Y, D, X, rps, Q = 2)) ## ----------------------------------------------------------------------------- summary(atebounds(Y, D, X, rps, Q = 3)) ## ----------------------------------------------------------------------------- summary(atebounds(Y, D, X, rps, Q = 4)) ## ----------------------------------------------------------------------------- Y <- EFM[,"cesarean"] D <- EFM[,"monitor"] X <- as.matrix(EFM[,c("arrest", "breech", "nullipar", "year")]) year <- EFM[,"year"] ## ----------------------------------------------------------------------------- ate_rps <- mean(D*Y)/mean(D) - mean((1-D)*Y)/mean(1-D) print(ate_rps) ## ----------------------------------------------------------------------------- rps <- rep(mean(D),length(D)) print(rps[1]) ## ----------------------------------------------------------------------------- summary(atebounds(Y, D, X, rps, Q = 1, x_discrete = TRUE)) ## ----------------------------------------------------------------------------- summary(atebounds(Y, D, X, rps, Q = 2, x_discrete = TRUE)) ## ----------------------------------------------------------------------------- summary(atebounds(Y, D, X, rps, Q = 3, x_discrete = TRUE)) ## ----------------------------------------------------------------------------- summary(atebounds(Y, D, X, rps, Q = 5, x_discrete = TRUE)) summary(atebounds(Y, D, X, rps, Q = 10, x_discrete = TRUE)) summary(atebounds(Y, D, X, rps, Q = 20, x_discrete = TRUE)) summary(atebounds(Y, D, X, rps, Q = 50, x_discrete = TRUE)) summary(atebounds(Y, D, X, rps, Q = 100, x_discrete = TRUE))