- Bgy.ci.upper.naive = naive.ci.Bgy[2],
- Bgy.ci.lower.naive = naive.ci.Bgy[1]))
-
-
- amelia.out.k <- amelia(df, m=200, p2s=0, idvars=c('x','w_pred'))
- mod.amelia.k <- zelig(y~x.obs+g, model='ls', data=amelia.out.k$imputations, cite=FALSE)
- (coefse <- combine_coef_se(mod.amelia.k, messages=FALSE))
-
- est.x.mi <- coefse['x.obs','Estimate']
- est.x.se <- coefse['x.obs','Std.Error']
- result <- append(result,
- list(Bxy.est.amelia.full = est.x.mi,
- Bxy.ci.upper.amelia.full = est.x.mi + 1.96 * est.x.se,
- Bxy.ci.lower.amelia.full = est.x.mi - 1.96 * est.x.se
- ))
+ Bzy.ci.upper.naive = naive.ci.Bzy[2],
+ Bzy.ci.lower.naive = naive.ci.Bzy[1]))
+
+ amelia_result <- list(
+ Bxy.est.amelia.full = NULL,
+ Bxy.ci.upper.amelia.full = NULL,
+ Bxy.ci.lower.amelia.full = NULL,
+ Bzy.est.amelia.full = NULL,
+ Bzy.ci.upper.amelia.full = NULL,
+ Bzy.ci.lower.amelia.full = NULL
+ )
+
+ tryCatch({
+ amelia.out.k <- amelia(df, m=200, p2s=0, idvars=c('x','w'))
+ mod.amelia.k <- zelig(y~x.obs+z, model='ls', data=amelia.out.k$imputations, cite=FALSE)
+ (coefse <- combine_coef_se(mod.amelia.k))
+
+ est.x.mi <- coefse['x.obs','Estimate']
+ est.x.se <- coefse['x.obs','Std.Error']
+ est.z.mi <- coefse['z','Estimate']
+ est.z.se <- coefse['z','Std.Error']
+
+ amelia_result <- list(Bxy.est.amelia.full = est.x.mi,
+ Bxy.ci.upper.amelia.full = est.x.mi + 1.96 * est.x.se,
+ Bxy.ci.lower.amelia.full = est.x.mi - 1.96 * est.x.se,
+ Bzy.est.amelia.full = est.z.mi,
+ Bzy.ci.upper.amelia.full = est.z.mi + 1.96 * est.z.se,
+ Bzy.ci.lower.amelia.full = est.z.mi - 1.96 * est.z.se
+ )
+
+ },
+
+ error = function(e){
+ result[['error']] <- e}
+ )
+
+
+ result <- append(result, amelia_result)
+
+
+ mle_result <- list(Bxy.est.mle = NULL,
+ Bxy.ci.upper.mle = NULL,
+ Bxy.ci.lower.mle = NULL,
+ Bzy.est.mle = NULL,
+ Bzy.ci.upper.mle = NULL,
+ Bzy.ci.lower.mle = NULL)
+
+ tryCatch({
+ temp.df <- copy(df)
+ temp.df <- temp.df[,x:=x.obs]
+ mod.caroll.lik <- measerr_mle(temp.df, outcome_formula=outcome_formula, proxy_formula=proxy_formula, truth_formula=truth_formula)
+ fischer.info <- solve(mod.caroll.lik$hessian)
+ coef <- mod.caroll.lik$par
+ ci.upper <- coef + sqrt(diag(fischer.info)) * 1.96
+ ci.lower <- coef - sqrt(diag(fischer.info)) * 1.96
+ mle_result <- list(Bxy.est.mle = coef['x'],
+ Bxy.ci.upper.mle = ci.upper['x'],
+ Bxy.ci.lower.mle = ci.lower['x'],
+ Bzy.est.mle = coef['z'],
+ Bzy.ci.upper.mle = ci.upper['z'],
+ Bzy.ci.lower.mle = ci.lower['z'])
+ },
+
+ error=function(e) {result[['error']] <- as.character(e)
+ })