|
|
| qqprep <- function (x, discrete.cutoff, which.subclass = NULL, numdraws = 5000,
|
| interactive = T, which.xs = NULL, ...) {
|
| X <- x$X
|
| varnames <- colnames(X)
|
| for (var in varnames) {
|
| if (is.factor(X[, var])) {
|
| tempX <- X[, !colnames(X) %in% c(var)]
|
| form <- formula(substitute(~dummy - 1, list(dummy = as.name(var))))
|
| X <- cbind(tempX, model.matrix(form, X))
|
| }
|
| }
|
| covariates <- X
|
| if (!is.null(which.xs)) {
|
| if (sum(which.xs %in% dimnames(covariates)[[2]]) != length(which.xs)) {
|
| stop("which.xs is incorrectly specified")
|
| }
|
| covariates <- covariates[, which.xs, drop = F]
|
| }
|
| treat <- x$treat
|
| matched <- x$weights != 0
|
| ratio <- x$call$ratio
|
| if (is.null(ratio)) {
|
| ratio <- 1
|
| }
|
| if (identical(x$call$method, "full") | (ratio != 1)) {
|
| t.plot <- sample(names(treat)[treat == 1], numdraws/2,
|
| replace = TRUE, prob = x$weights[treat == 1])
|
| c.plot <- sample(names(treat)[treat == 0], numdraws/2,
|
| replace = TRUE, prob = x$weights[treat == 0])
|
| m.covariates <- x$X[c(t.plot, c.plot), ]
|
| m.treat <- x$treat[c(t.plot, c.plot)]
|
| }
|
| else {
|
| m.covariates <- covariates[matched, , drop = F]
|
| m.treat <- treat[matched]
|
| }
|
| if (!is.null(which.subclass)) {
|
| subclass <- x$subclass
|
| sub.index <- subclass == which.subclass & !is.na(subclass)
|
| sub.covariates <- covariates[sub.index, , drop = F]
|
| sub.treat <- treat[sub.index]
|
| sub.matched <- matched[sub.index]
|
| m.covariates <- sub.covariates[sub.matched, , drop = F]
|
| m.treat <- sub.treat[sub.matched]
|
| }
|
| nn <- dimnames(covariates)[[2]]
|
| nc <- length(nn)
|
| covariates <- data.matrix(covariates)
|
| toplot <- NULL
|
| for (i in 1:nc) {
|
| xi <- covariates[, i]
|
| m.xi <- m.covariates[, i]
|
| rr <- range(xi)
|
|
|
|
|
| eqqplot <- function(x,y) {
|
| sx <- sort(x)
|
| sy <- sort(y)
|
| lenx <- length(sx)
|
| leny <- length(sy)
|
| if (leny < lenx)
|
| sx <- approx(1:lenx, sx, n = leny, method = "constant")$y
|
| if (leny > lenx)
|
| sy <- approx(1:leny, sy, n = lenx, method = "constant")$y
|
| return(list(x = sx,y = sy))
|
| }
|
| toplot <- bind_rows(toplot,
|
| bind_rows(data.frame(eqqplot(x = xi[treat == 0],y = xi[treat == 1]),type = "Raw",cov = nn[i],rrlb = rr[1],rrub = rr[2]),
|
| data.frame(eqqplot(x = m.xi[m.treat == 0],y = m.xi[m.treat == 1]),type = "Matched",cov = nn[i],rrlb = rr[1],rrub = rr[2])))
|
| }
|
| return(list(toplot = toplot))
|
| }
|
|
|
|
|
|
|
| interaction_plot_continuous <- function(model, effect = "", moderator = "", varcov="default", minimum="min", maximum="max",colr = "grey",
|
| incr="default", num_points = 10, conf=.95, mean=FALSE, median=FALSE, alph=80, rugplot=T,
|
| histogram=F, title="Marginal effects plot", xlabel="Value of moderator",
|
| ylabel="Estimated marginal coefficient",pointsplot = F,plot = F,show_est = F) {
|
|
|
| if (varcov == "default"){
|
| covMat = vcov(model)
|
| }else{
|
| covMat = varcov
|
| }
|
|
|
|
|
| mod_frame = model.frame(model)
|
|
|
|
|
| if(effect == "") {
|
| int.string <- rownames(summary(model)$coefficients)[grepl(":",rownames(summary(model)$coefficients))]
|
| effect <- substr(int.string,1,regexpr(":",int.string)[1]-1)
|
| }
|
| if(moderator == "") {
|
| int.string <- rownames(summary(model)$coefficients)[grepl(":",rownames(summary(model)$coefficients))]
|
| moderator <- substr(int.string,regexpr(":",int.string)[1]+1,nchar(int.string))
|
| }
|
| interaction <- paste(effect,":",moderator,sep="")
|
| beta_1 = summary(model)$coefficients[effect,1]
|
| beta_3 = summary(model)$coefficients[interaction,1]
|
|
|
|
|
|
|
| if (minimum == "min"){
|
| min_val = min(mod_frame[[moderator]])
|
| }else{
|
| min_val = minimum
|
| }
|
|
|
| if (maximum == "max"){
|
| max_val = max(mod_frame[[moderator]])
|
| }else{
|
| max_val = maximum
|
| }
|
|
|
|
|
| if (min_val > max_val){
|
| stop("Error: Minimum moderator value greater than maximum value.")
|
| }
|
|
|
|
|
| if (incr == "default"){
|
| increment = (max_val - min_val)/(num_points - 1)
|
| }else{
|
| increment = incr
|
| }
|
|
|
|
|
| x_2 <- seq(from=min_val, to=max_val, by=increment)
|
|
|
|
|
| delta_1 = beta_1 + beta_3*x_2
|
|
|
|
|
| var_1 = covMat[effect,effect] + (x_2^2)*covMat[interaction, interaction] + 2*x_2*covMat[effect, interaction]
|
|
|
|
|
| se_1 = sqrt(var_1)
|
|
|
|
|
| z_score = qnorm(1 - ((1 - conf)/2))
|
| upper_bound = sapply(1:length(z_score), function(x) delta_1 + z_score[x]*se_1)
|
| lower_bound = sapply(1:length(z_score), function(x) delta_1 - z_score[x]*se_1)
|
|
|
|
|
| max_y = max(upper_bound)
|
| min_y = min(lower_bound)
|
|
|
|
|
| hist_col = colr
|
|
|
| stars <- ifelse(abs(summary(model)$coefficients[interaction,3]) >2.6,"***",
|
| ifelse(abs(summary(model)$coefficients[interaction,3]) > 1.96,"**",
|
| ifelse(abs(summary(model)$coefficients[interaction,3]) > 1.65,"*","")))
|
| est <- paste("Interaction: ",round(summary(model)$coefficients[interaction,1],3),stars," (",
|
| round(summary(model)$coefficients[interaction,2],3),")",sep="")
|
|
|
| if(plot) {
|
| plot(x=c(), y=c(), ylim=c(min_y, max_y), xlim=c(min_val, max_val),
|
| xlab=xlabel, ylab=ylabel, main=title)
|
|
|
|
|
| if(!pointsplot) {
|
| lines(y=delta_1, x=x_2,col = colr)
|
| for(i in ncol(upper_bound):1) {
|
| polygon(c(x_2,rev(x_2)),c(upper_bound[,i],rev(lower_bound[,i])),border = NA,col = colr)
|
| }
|
| }else{
|
| points(y = delta_1,x = x_2,col = colr,pch = 19)
|
| for(i in ncol(upper_bound):1) {
|
| segments(x_2,upper_bound[,i],x_2,lower_bound[,i],col = colr,lwd = i)
|
| }
|
| }
|
|
|
| abline(h=0, lty=3)
|
|
|
|
|
| if (mean){
|
| abline(v = mean(mod_frame[[moderator]]), lty=2, col="red")
|
| }
|
|
|
|
|
| if (median){
|
| abline(v = median(mod_frame[[moderator]]), lty=3, col="blue")
|
| }
|
|
|
|
|
| if (rugplot){
|
| rug(mod_frame[[moderator]])
|
| }
|
|
|
| if (show_est) {
|
| text(par('usr')[ 2 ], par('usr')[ 4 ],adj=c(1.05,1.2),
|
| labels = est)
|
|
|
| }
|
|
|
| if (histogram & minimum=="min" & maximum=="max"){
|
| par(new=T)
|
| hist(mod_frame[[moderator]], axes=F, xlab="", ylab="",main="", border=hist_col, col=hist_col)
|
| }
|
| }
|
| return(list(delta_1 = delta_1,x_2 = x_2,ub = upper_bound,lb = lower_bound,inc = increment,est = est))
|
| }
|
|
|