Nothing
# bhpm.cluster.BB.dep.lev1.convergence.diag
# Model bhpm.BB
# R. Carragher
# Date: 29/06/2018
#
# If the MCMC simulation has been run for more than one chain report the Gelman-Rubin statistic.
# If the MCMC simulation has been run for only one chain report the Geweke diagnostic (Z-score)
#
Id <- "$Id: bhpm.cluster.BB.hier3.lev1.convergence.R,v 1.11 2020/03/31 12:42:23 clb13102 Exp clb13102 $"
bhpm.cluster.BB.dep.lev1.convergence.diag <- function(raw, debug_diagnostic = FALSE)
{
c_base = bhpm.cluster.1a.dep.lev1.convergence.diag(raw, debug_diagnostic)
if (is.null(c_base)) {
return(NULL)
}
# Check which variables we are monitoring
monitor = raw$monitor
theta_mon = monitor[monitor$variable == "theta",]$monitor
pi_mon = monitor[monitor$variable == "pi",]$monitor
alpha_pi_mon = monitor[monitor$variable == "alpha.pi",]$monitor
beta_pi_mon = monitor[monitor$variable == "beta.pi",]$monitor
theta.trt.grps <- raw$Trt.Grps[ raw$Trt.Grps$param == "theta", ]$Trt.Grp
nchains = raw$chains
if (alpha_pi_mon == 1 && !("alpha.pi" %in% names(raw))) {
message("Missing alpha.pi data")
return(NULL)
}
if (beta_pi_mon == 1 && !("beta.pi" %in% names(raw))) {
message("Missing beta.pi data")
return(NULL)
}
if (pi_mon == 1 && !("pi" %in% names(raw))) {
message("Missing pi data")
return(NULL)
}
if (raw$sim_type == "MH") {
if (alpha_pi_mon == 1 && !("alpha.pi_acc" %in% names(raw))) {
message("Missing beta.pi_acc data")
return(NULL)
}
if (beta_pi_mon == 1 && !("beta.pi_acc" %in% names(raw))) {
message("Missing beta.pi_acc data")
return(NULL)
}
}
else {
if (theta_mon == 1 && !("theta_acc" %in% names(raw))) {
message("Missing theta_acc data")
return(NULL)
}
}
pi_conv = data.frame(Trt.Grp = integer(0), Outcome.Grp = character(0), stat = numeric(0), upper_ci = numeric(0), stringsAsFactors=FALSE)
alpha.pi_conv = data.frame(Trt.Grp = integer(0), stat = numeric(0), upper_ci = numeric(0), stringsAsFactors=FALSE)
beta.pi_conv = data.frame(Trt.Grp = integer(0), stat = numeric(0), upper_ci = numeric(0), stringsAsFactors=FALSE)
type <- NA
if (nchains > 1) {
# Gelman-Rubin Statistics
type = "Gelman-Rubin"
i = 1
if (pi_mon == 1) {
for (b in 1:raw$nOutcome.Grp[i]) {
# pi
for (t in 1:(raw$nTreatments - 1)) {
g = M_global$GelmanRubin(raw$pi[, t, b, ], nchains)
row <- data.frame(Trt.Grp = theta.trt.grps[t], Outcome.Grp = raw$Outcome.Grp[i, b], stat = g$psrf[1], upper_ci = g$psrf[2], stringsAsFactors=FALSE)
pi_conv = rbind(pi_conv, row)
}
}
}
# alpha.pi
if (alpha_pi_mon == 1) {
for (t in 1:(raw$nTreatments - 1)) {
g = M_global$GelmanRubin(raw$alpha.pi[,t,], nchains)
row <- data.frame(Trt.Grp = theta.trt.grps[t], stat = g$psrf[1], upper_ci = g$psrf[2], stringsAsFactors=FALSE)
alpha.pi_conv = rbind(alpha.pi_conv, row)
}
}
# beta.pi
if (beta_pi_mon == 1) {
for (t in 1:(raw$nTreatments - 1)) {
g = M_global$GelmanRubin(raw$beta.pi[,t,], nchains)
row <- data.frame(Trt.Grp = theta.trt.grps[t], stat = g$psrf[1], upper_ci = g$psrf[2], stringsAsFactors=FALSE)
beta.pi_conv = rbind(beta.pi_conv, row)
}
}
}
else {
# Geweke Diagnostic
type = "Geweke"
i = 1
if (pi_mon == 1) {
for (b in 1:raw$nOutcome.Grp[i]) {
# pi
for (t in 1:(raw$nTreatments - 1)) {
g = M_global$Geweke(raw$pi[1, t, b, ])
row <- data.frame(Trt.Grp = theta.trt.grps[t], Outcome.Grp = raw$Outcome.Grp[i, b], stat = g$z, upper_ci = NA, stringsAsFactors=FALSE)
pi_conv = rbind(pi_conv, row)
}
}
}
if (alpha_pi_mon == 1) {
for (t in 1:(raw$nTreatments - 1)) {
g = M_global$Geweke(raw$alpha.pi[1, t,])
row <- data.frame(Trt.Grp = theta.trt.grps[t], stat = g$z, upper_ci = NA, stringsAsFactors=FALSE)
alpha.pi_conv = rbind(alpha.pi_conv, row)
}
}
if (beta_pi_mon == 1) {
for (t in 1:(raw$nTreatments - 1)) {
g = M_global$Geweke(raw$beta.pi[1, t,])
row <- data.frame(Trt.Grp = theta.trt.grps[t], stat = g$z, upper_ci = NA, stringsAsFactors=FALSE)
beta.pi_conv = rbind(beta.pi_conv, row)
}
}
}
alpha.pi_acc <- data.frame(nchains = numeric(0), Trt.Grp = integer(0))
beta.pi_acc <- data.frame(nchains = numeric(0), Trt.Grp = integer(0))
theta_acc = data.frame(chain = numeric(0), Trt.Grp = integer(0), Cluster = character(0), Outcome.Grp = character(0),
Outcome = character(0), rate = numeric(0), stringsAsFactors=FALSE)
for (i in 1:raw$nClusters) {
for (b in 1:raw$nOutcome.Grp[i]) {
for (j in 1:raw$nOutcome[i, b]) {
for (c in 1:nchains) {
for (t in 1:(raw$nTreatments - 1)) {
rate <- raw$theta_acc[c, t, i, b, j]/raw$iter
row <- data.frame(chain = c, Trt.Grp = theta.trt.grps[t], Cluster = raw$Clusters[i], Outcome.Grp = raw$Outcome.Grp[i, b],
Outcome = raw$Outcome[i, b,j], rate = rate, stringsAsFactors=FALSE)
theta_acc = rbind(theta_acc, row)
}
}
}
}
}
if (raw$sim_type == "MH") {
for (c in 1:nchains) {
if (alpha_pi_mon == 1) {
for (t in 1:(raw$nTreatments - 1)) {
alpha.pi_acc[c, t] <- raw$alpha.pi_acc[c, t]/raw$iter
}
}
if (beta_pi_mon == 1) {
for (t in 1:(raw$nTreatments - 1)) {
beta.pi_acc[c, t] <- raw$beta.pi_acc[c, t]/raw$iter
}
}
}
}
rownames(theta_acc) <- NULL
rownames(pi_conv) <- NULL
rownames(alpha.pi_conv) <- NULL
rownames(beta.pi_conv) <- NULL
rownames(alpha.pi_acc) <- NULL
rownames(beta.pi_acc) <- NULL
c_base$theta_acc = theta_acc
c_BB = list(pi.conv.diag = pi_conv, alpha.pi.conv.diag = alpha.pi_conv, beta.pi.conv.diag = beta.pi_conv,
alpha.pi_acc = alpha.pi_acc, beta.pi_acc = beta.pi_acc)
conv.diag = c(c_base, c_BB)
attr(conv.diag, "model") = attr(raw, "model")
return(conv.diag)
}
bhpm.cluster.BB.dep.lev1.print.convergence.summary <- function(conv) {
if (is.null(conv)) {
message("NULL conv data")
return(NULL)
}
# Check which variables we are monitoring
monitor = conv$monitor
theta_mon = monitor[monitor$variable == "theta",]$monitor
gamma_mon = monitor[monitor$variable == "gamma",]$monitor
mu.theta_mon = monitor[monitor$variable == "mu.theta",]$monitor
mu.gamma_mon = monitor[monitor$variable == "mu.gamma",]$monitor
sigma2.theta_mon = monitor[monitor$variable == "sigma2.theta",]$monitor
sigma2.gamma_mon = monitor[monitor$variable == "sigma2.gamma",]$monitor
mu.theta.0_mon = monitor[monitor$variable == "mu.theta.0",]$monitor
mu.gamma.0_mon = monitor[monitor$variable == "mu.gamma.0",]$monitor
tau2.theta.0_mon = monitor[monitor$variable == "tau2.theta.0",]$monitor
tau2.gamma.0_mon = monitor[monitor$variable == "tau2.gamma.0",]$monitor
pi_mon = monitor[monitor$variable == "pi",]$monitor
alpha_pi_mon = monitor[monitor$variable == "alpha.pi",]$monitor
beta_pi_mon = monitor[monitor$variable == "beta.pi",]$monitor
model = attr(conv, "model")
if (is.null(model)) {
message("Convergence model attribute missing")
return(NULL)
}
if (gamma_mon == 1 && !("gamma.conv.diag" %in% names(conv))) {
message("Missing gamma.conv.diag data")
return(NULL)
}
if (theta_mon == 1 && !("theta.conv.diag" %in% names(conv))) {
message("Missing theta.conv.diag data")
return(NULL)
}
if (mu.gamma_mon == 1 && !("mu.gamma.conv.diag" %in% names(conv))) {
message("Missing mu.gamma.conv.diag data")
return(NULL)
}
if (mu.theta_mon == 1 && !("mu.theta.conv.diag" %in% names(conv))) {
message("Missing mu.theta.conv.diag data")
return(NULL)
}
if (sigma2.gamma_mon == 1 && !("sigma2.gamma.conv.diag" %in% names(conv))) {
message("Missing sigma2.gamma.conv.diag data")
return(NULL)
}
if (sigma2.theta_mon == 1 && !("sigma2.theta.conv.diag" %in% names(conv))) {
message("Missing sigma2.theta.conv.diag data")
return(NULL)
}
if (mu.gamma.0_mon == 1 && !("mu.gamma.0.conv.diag" %in% names(conv))) {
message("Missing mu.gamma.0.conv.diag data")
return(NULL)
}
if (mu.theta.0_mon == 1 && !("mu.theta.0.conv.diag" %in% names(conv))) {
message("Missing mu.theta.0.conv.diag data")
return(NULL)
}
if (tau2.gamma.0_mon == 1 && !("tau2.gamma.0.conv.diag" %in% names(conv))) {
message("Missing tau2.gamma.0.conv.diag data")
return(NULL)
}
if (tau2.theta.0_mon == 1 && !("tau2.theta.0.conv.diag" %in% names(conv))) {
message("Missing tau2.theta.0.conv.diag data")
return(NULL)
}
if (gamma_mon == 1 && !("gamma_acc" %in% names(conv))) {
message("Missing gamma_acc data")
return(NULL)
}
if (theta_mon == 1 && !("theta_acc" %in% names(conv))) {
message("Missing theta_acc data")
return(NULL)
}
if (pi_mon == 1 && !("pi.conv.diag" %in% names(conv))) {
message("Missing pi.conv.diag data")
return(NULL)
}
if (alpha_pi_mon == 1 && !("alpha.pi.conv.diag" %in% names(conv))) {
message("Missing alpha.pi.conv.diag data")
return(NULL)
}
if (beta_pi_mon == 1 && !("beta.pi.conv.diag" %in% names(conv))) {
message("Missing beta.pi.conv.diag data")
return(NULL)
}
if (alpha_pi_mon == 1 && !("alpha.pi_acc" %in% names(conv))) {
message("Missing alpha.pi_acc data")
return(NULL)
}
if (beta_pi_mon == 1 && !("beta.pi_acc" %in% names(conv))) {
message("Missing beta.pi_acc data")
return(NULL)
}
cat(sprintf("Summary Convergence Diagnostics:\n"))
cat(sprintf("================================\n"))
if (conv$type == "Gelman-Rubin") {
if (theta_mon == 1) {
cat(sprintf("theta:\n"))
cat(sprintf("------\n"))
max_t = head(conv$theta.conv.diag[conv$theta.conv.diag$stat == max(conv$theta.conv.diag$stat),,
drop = FALSE], 1)
cat(sprintf("Max Gelman-Rubin diagnostic (%d %s %s %s): %0.6f\n", max_t$Trt.Grp, max_t$Cluster, max_t$Outcome.Grp, max_t$Outcome, max_t$stat))
min_t = head(conv$theta.conv.diag[conv$theta.conv.diag$stat == min(conv$theta.conv.diag$stat),,
drop = FALSE], 1)
cat(sprintf("Min Gelman-Rubin diagnostic (%d %s, %s %s): %0.6f\n", min_t$Trt.Grp, min_t$Cluster, min_t$Outcome.Grp, min_t$Outcome, min_t$stat))
}
if (gamma_mon == 1) {
cat(sprintf("gamma:\n"))
cat(sprintf("------\n"))
max_t = head(conv$gamma.conv.diag[conv$gamma.conv.diag$stat == max(conv$gamma.conv.diag$stat),,
drop = FALSE], 1)
cat(sprintf("Max Gelman-Rubin diagnostic (%s %s %s): %0.6f\n", max_t$Cluster, max_t$Outcome.Grp, max_t$Outcome, max_t$stat))
min_t = head(conv$gamma.conv.diag[conv$gamma.conv.diag$stat == min(conv$gamma.conv.diag$stat),,
drop = FALSE], 1)
cat(sprintf("Min Gelman-Rubin diagnostic (%s %s %s): %0.6f\n", min_t$Cluster, min_t$Outcome.Grp, min_t$Outcome, min_t$stat))
}
if (mu.gamma_mon == 1) {
cat(sprintf("mu.gamma:\n"))
cat(sprintf("---------\n"))
max_t = head(conv$mu.gamma.conv.diag[conv$mu.gamma.conv.diag$stat
== max(conv$mu.gamma.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Max Gelman-Rubin diagnostic (%s): %0.6f\n", max_t$Outcome.Grp, max_t$stat))
min_t = head(conv$mu.gamma.conv.diag[conv$mu.gamma.conv.diag$stat
== min(conv$mu.gamma.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Min Gelman-Rubin diagnostic (%s): %0.6f\n", min_t$Outcome.Grp, min_t$stat))
}
if (mu.theta_mon == 1) {
cat(sprintf("mu.theta:\n"))
cat(sprintf("---------\n"))
max_t = head(conv$mu.theta.conv.diag[conv$mu.theta.conv.diag$stat
== max(conv$mu.theta.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Max Gelman-Rubin diagnostic (%d %s): %0.6f\n", max_t$Trt.Grp, max_t$Outcome.Grp, max_t$stat))
min_t = head(conv$mu.theta.conv.diag[conv$mu.theta.conv.diag$stat
== min(conv$mu.theta.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Min Gelman-Rubin diagnostic (%d %s): %0.6f\n", min_t$Trt.Grp, min_t$Outcome.Grp, min_t$stat))
}
if (sigma2.gamma_mon == 1) {
cat(sprintf("sigma2.gamma:\n"))
cat(sprintf("-------------\n"))
max_t = head(conv$sigma2.gamma.conv.diag[conv$sigma2.gamma.conv.diag$stat
== max(conv$sigma2.gamma.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Max Gelman-Rubin diagnostic (%s): %0.6f\n", max_t$Outcome.Grp, max_t$stat))
min_t = head(conv$sigma2.gamma.conv.diag[conv$sigma2.gamma.conv.diag$stat
== min(conv$sigma2.gamma.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Min Gelman-Rubin diagnostic (%s): %0.6f\n", min_t$Outcome.Grp, min_t$stat))
}
if (sigma2.theta_mon == 1) {
cat(sprintf("sigma2.theta:\n"))
cat(sprintf("-------------\n"))
max_t = head(conv$sigma2.theta.conv.diag[conv$sigma2.theta.conv.diag$stat
== max(conv$sigma2.theta.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Max Gelman-Rubin diagnostic (%d %s): %0.6f\n", max_t$Trt.Grp, max_t$Outcome.Grp, max_t$stat))
min_t = head(conv$sigma2.theta.conv.diag[conv$sigma2.theta.conv.diag$stat
== min(conv$sigma2.theta.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Min Gelman-Rubin diagnostic (%d %s): %0.6f\n", min_t$Trt.Grp, min_t$Outcome.Grp, min_t$stat))
}
if (pi_mon == 1) {
cat(sprintf("pi:\n"))
cat(sprintf("---\n"))
max_t = head(conv$pi.conv.diag[conv$pi.conv.diag$stat
== max(conv$pi.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Max Gelman-Rubin diagnostic (%d %s): %0.6f\n", max_t$Trt.Grp, max_t$Outcome.Grp, max_t$stat))
min_t = head(conv$pi.conv.diag[conv$pi.conv.diag$stat
== min(conv$pi.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Min Gelman-Rubin diagnostic (%d %s): %0.6f\n", min_t$Trt.Grp, min_t$Outcome.Grp, min_t$stat))
}
if (mu.gamma.0_mon == 1) {
cat(sprintf("mu.gamma.0:\n"))
cat(sprintf("-----------\n"))
max_t = head(conv$mu.gamma.0.conv.diag[conv$mu.gamma.0.conv.diag$stat
== max(conv$mu.gamma.0.conv.diag$stat), ], 1)
cat(sprintf("Max Gelman-Rubin diagnostic: %0.6f\n", max_t$stat))
min_t = head(conv$mu.gamma.0.conv.diag[conv$mu.gamma.0.conv.diag$stat
== min(conv$mu.gamma.0.conv.diag$stat), ], 1)
cat(sprintf("Min Gelman-Rubin diagnostic: %0.6f\n", min_t$stat))
}
if (mu.theta.0_mon == 1) {
cat(sprintf("mu.theta.0:\n"))
cat(sprintf("-----------\n"))
max_t = head(conv$mu.theta.0.conv.diag[conv$mu.theta.0.conv.diag$stat
== max(conv$mu.theta.0.conv.diag$stat), ], 1)
cat(sprintf("Max Gelman-Rubin diagnostic: %d %0.6f\n", max_t$Trt.Grp, max_t$stat))
min_t = head(conv$mu.theta.0.conv.diag[conv$mu.theta.0.conv.diag$stat
== min(conv$mu.theta.0.conv.diag$stat), ], 1)
cat(sprintf("Min Gelman-Rubin diagnostic: %d %0.6f\n", min_t$Trt.Grp, min_t$stat))
}
if (tau2.gamma.0_mon == 1) {
cat(sprintf("tau2.gamma.0:\n"))
cat(sprintf("-------------\n"))
max_t = head(conv$tau2.gamma.0.conv.diag[conv$tau2.gamma.0.conv.diag$stat
== max(conv$tau2.gamma.0.conv.diag$stat), ], 1)
cat(sprintf("Max Gelman-Rubin diagnostic: %0.6f\n", max_t$stat))
min_t = head(conv$tau2.gamma.0.conv.diag[conv$tau2.gamma.0.conv.diag$stat
== min(conv$tau2.gamma.0.conv.diag$stat), ], 1)
cat(sprintf("Min Gelman-Rubin diagnostic: %0.6f\n", min_t$stat))
}
if (tau2.theta.0_mon == 1) {
cat(sprintf("tau2.theta.0:\n"))
cat(sprintf("-------------\n"))
max_t = head(conv$tau2.theta.0.conv.diag[conv$tau2.theta.0.conv.diag$stat
== max(conv$tau2.theta.0.conv.diag$stat), ], 1)
cat(sprintf("Max Gelman-Rubin diagnostic: %d %0.6f\n", max_t$Trt.Grp, max_t$stat))
min_t = head(conv$tau2.theta.0.conv.diag[conv$tau2.theta.0.conv.diag$stat
== min(conv$tau2.theta.0.conv.diag$stat), ], 1)
cat(sprintf("Min Gelman-Rubin diagnostic: %d %0.6f\n", min_t$Trt.Grp, min_t$stat))
}
if (alpha_pi_mon == 1) {
cat(sprintf("alpha.pi:\n"))
cat(sprintf("----------\n"))
max_t = head(conv$alpha.pi.conv.diag[conv$alpha.pi.conv.diag$stat
== max(conv$alpha.pi.conv.diag$stat), ], 1)
cat(sprintf("Max Gelman-Rubin diagnostic: %d %0.6f\n", max_t$Trt.Grp, max_t$stat))
min_t = head(conv$alpha.pi.conv.diag[conv$alpha.pi.conv.diag$stat
== min(conv$alpha.pi.conv.diag$stat), ], 1)
cat(sprintf("Min Gelman-Rubin diagnostic: %d %0.6f\n", min_t$Trt.Grp, min_t$stat))
}
if (beta_pi_mon == 1) {
cat(sprintf("beta.pi:\n"))
cat(sprintf("--------\n"))
max_t = head(conv$beta.pi.conv.diag[conv$beta.pi.conv.diag$stat
== max(conv$beta.pi.conv.diag$stat), ], 1)
cat(sprintf("Max Gelman-Rubin diagnostic: %d %0.6f\n", max_t$Trt.Grp, max_t$stat))
min_t = head(conv$beta.pi.conv.diag[conv$beta.pi.conv.diag$stat
== min(conv$beta.pi.conv.diag$stat), ], 1)
cat(sprintf("Min Gelman-Rubin diagnostic: %d %0.6f\n", min_t$Trt.Grp, min_t$stat))
}
}
else {
if (theta_mon == 1) {
cat(sprintf("theta:\n"))
cat(sprintf("------\n"))
max_t = head(conv$theta.conv.diag[conv$theta.conv.diag$stat == max(conv$theta.conv.diag$stat),,
drop = FALSE], 1)
cat(sprintf("Max Geweke statistic (%d %s %s %s): %0.6f (%s)\n", max_t$Trt.Grp, max_t$Cluster, max_t$Outcome.Grp, max_t$Outcome, max_t$stat,
chk_val(max_t$stat)))
min_t = head(conv$theta.conv.diag[conv$theta.conv.diag$stat == min(conv$theta.conv.diag$stat),,
drop = FALSE], 1)
cat(sprintf("Min Geweke statistic (%d %s %s %s): %0.6f (%s)\n", min_t$Trt.Grp, min_t$Cluster, min_t$Outcome.Grp, min_t$Outcome, min_t$stat,
chk_val(min_t$stat)))
}
if (gamma_mon == 1) {
cat(sprintf("gamma:\n"))
cat(sprintf("------\n"))
max_t = head(conv$gamma.conv.diag[conv$gamma.conv.diag$stat == max(conv$gamma.conv.diag$stat),,
drop = FALSE], 1)
cat(sprintf("Max Geweke statistic (%s %s %s): %0.6f (%s)\n", max_t$Cluster, max_t$Outcome.Grp, max_t$Outcome, max_t$stat,
chk_val(max_t$stat)))
min_t = head(conv$gamma.conv.diag[conv$gamma.conv.diag$stat == min(conv$gamma.conv.diag$stat),,
drop = FALSE], 1)
cat(sprintf("Min Geweke statistic (%s %s %s): %0.6f (%s)\n", min_t$Cluster, min_t$Outcome.Grp, min_t$Outcome, min_t$stat,
chk_val(min_t$stat)))
}
if (mu.gamma_mon == 1) {
cat(sprintf("mu.gamma:\n"))
cat(sprintf("---------\n"))
max_t = head(conv$mu.gamma.conv.diag[conv$mu.gamma.conv.diag$stat
== max(conv$mu.gamma.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Max Geweke statistic (%s): %0.6f (%s)\n", max_t$Outcome.Grp, max_t$stat,
chk_val(max_t$stat)))
min_t = head(conv$mu.gamma.conv.diag[conv$mu.gamma.conv.diag$stat
== min(conv$mu.gamma.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Min Geweke statistic (%s): %0.6f (%s)\n", min_t$Outcome.Grp, min_t$stat,
chk_val(min_t$stat)))
}
if (mu.theta_mon == 1) {
cat(sprintf("mu.theta:\n"))
cat(sprintf("---------\n"))
max_t = head(conv$mu.theta.conv.diag[conv$mu.theta.conv.diag$stat
== max(conv$mu.theta.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Max Geweke statistic (%d %s): %0.6f (%s)\n", max_t$Trt.Grp, max_t$Outcome.Grp, max_t$stat,
chk_val(max_t$stat)))
min_t = head(conv$mu.theta.conv.diag[conv$mu.theta.conv.diag$stat
== min(conv$mu.theta.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Min Geweke statistic (%d %s): %0.6f (%s)\n", min_t$Trt.Grp, min_t$Outcome.Grp, min_t$stat,
chk_val(min_t$stat)))
}
if (sigma2.gamma_mon == 1) {
cat(sprintf("sigma2.gamma:\n"))
cat(sprintf("-------------\n"))
max_t = head(conv$sigma2.gamma.conv.diag[conv$sigma2.gamma.conv.diag$stat
== max(conv$sigma2.gamma.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Max Geweke statistic (%s): %0.6f (%s)\n", max_t$Outcome.Grp, max_t$stat,
chk_val(max_t$stat)))
min_t = head(conv$sigma2.gamma.conv.diag[conv$sigma2.gamma.conv.diag$stat
== min(conv$sigma2.gamma.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Min Geweke statistic (%s): %0.6f (%s)\n", min_t$Outcome.Grp, min_t$stat,
chk_val(min_t$stat)))
}
if (sigma2.theta_mon == 1) {
cat(sprintf("sigma2.theta:\n"))
cat(sprintf("-------------\n"))
max_t = head(conv$sigma2.theta.conv.diag[conv$sigma2.theta.conv.diag$stat
== max(conv$sigma2.theta.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Max Geweke statistic (%d %s): %0.6f (%s)\n", max_t$Trt.Grp, max_t$Outcome.Grp, max_t$stat,
chk_val(max_t$stat)))
min_t = head(conv$sigma2.theta.conv.diag[conv$sigma2.theta.conv.diag$stat
== min(conv$sigma2.theta.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Min Geweke statistic (%d %s): %0.6f (%s)\n", min_t$Trt.Grp, min_t$Outcome.Grp, min_t$stat,
chk_val(min_t$stat)))
}
if (pi_mon == 1) {
cat(sprintf("pi:\n"))
cat(sprintf("---\n"))
max_t = head(conv$pi.conv.diag[conv$pi.conv.diag$stat
== max(conv$pi.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Max Geweke statistic (%d %s): %0.6f (%s)\n", max_t$Trt.Grp, max_t$Outcome.Grp, max_t$stat,
chk_val(max_t$stat)))
min_t = head(conv$pi.conv.diag[conv$pi.conv.diag$stat
== min(conv$pi.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Min Geweke statistic (%d %s): %0.6f (%s)\n", min_t$Trt.Grp, min_t$Outcome.Grp, min_t$stat,
chk_val(min_t$stat)))
}
if (mu.gamma.0_mon == 1) {
cat(sprintf("mu.gamma.0:\n"))
cat(sprintf("-----------\n"))
max_t = head(conv$mu.gamma.0.conv.diag[conv$mu.gamma.0.conv.diag$stat
== max(conv$mu.gamma.0.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Max Geweke statistic: %0.6f (%s)\n", max_t$stat,
chk_val(max_t$stat)))
min_t = head(conv$mu.gamma.0.conv.diag[conv$mu.gamma.0.conv.diag$stat
== min(conv$mu.gamma.0.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Min Geweke statistic: %0.6f (%s)\n", min_t$stat,
chk_val(min_t$stat)))
}
if (mu.theta.0_mon == 1) {
cat(sprintf("mu.theta.0:\n"))
cat(sprintf("-----------\n"))
max_t = head(conv$mu.theta.0.conv.diag[conv$mu.theta.0.conv.diag$stat
== max(conv$mu.theta.0.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Max Geweke statistic: %d %0.6f (%s)\n", max_t$Trt.Grp, max_t$stat,
chk_val(max_t$stat)))
min_t = head(conv$mu.theta.0.conv.diag[conv$mu.theta.0.conv.diag$stat
== min(conv$mu.theta.0.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Min Geweke statistic: %d %0.6f (%s)\n", min_t$Trt.Grp, min_t$stat,
chk_val(min_t$stat)))
}
if (tau2.gamma.0_mon == 1) {
cat(sprintf("tau2.gamma.0:\n"))
cat(sprintf("-------------\n"))
max_t = head(conv$tau2.gamma.0.conv.diag[conv$tau2.gamma.0.conv.diag$stat
== max(conv$tau2.gamma.0.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Max Geweke statistic: %0.6f (%s)\n", max_t$stat,
chk_val(max_t$stat)))
min_t = head(conv$tau2.gamma.0.conv.diag[conv$tau2.gamma.0.conv.diag$stat
== min(conv$tau2.gamma.0.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Min Geweke statistic: %0.6f (%s)\n", min_t$stat,
chk_val(min_t$stat)))
}
if (tau2.theta.0_mon == 1) {
cat(sprintf("tau2.theta.0:\n"))
cat(sprintf("-------------\n"))
max_t = head(conv$tau2.theta.0.conv.diag[conv$tau2.theta.0.conv.diag$stat
== max(conv$tau2.theta.0.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Max Geweke statistic: %d %0.6f (%s)\n", max_t$Trt.Grp, max_t$stat,
chk_val(max_t$stat)))
min_t = head(conv$tau2.theta.0.conv.diag[conv$tau2.theta.0.conv.diag$stat
== min(conv$tau2.theta.0.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Min Geweke statistic: %d %0.6f (%s)\n", min_t$Trt.Grp, min_t$stat,
chk_val(min_t$stat)))
}
if (alpha_pi_mon == 1) {
cat(sprintf("alpha.pi:\n"))
cat(sprintf("----------\n"))
max_t = head(conv$alpha.pi.conv.diag[conv$alpha.pi.conv.diag$stat
== max(conv$alpha.pi.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Max Geweke statistic: %d %0.6f (%s)\n", max_t$Trt.Grp, max_t$stat,
chk_val(max_t$stat)))
min_t = head(conv$alpha.pi.conv.diag[conv$alpha.pi.conv.diag$stat
== min(conv$alpha.pi.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Min Geweke statistic: %d %0.6f (%s)\n", min_t$Trt.Grp, min_t$stat,
chk_val(min_t$stat)))
}
if (beta_pi_mon == 1) {
cat(sprintf("beta.pi:\n"))
cat(sprintf("----------\n"))
max_t = head(conv$beta.pi.conv.diag[conv$beta.pi.conv.diag$stat
== max(conv$beta.pi.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Max Geweke statistic: %d %0.6f (%s)\n", max_t$Trt.Grp, max_t$stat,
chk_val(max_t$stat)))
min_t = head(conv$beta.pi.conv.diag[conv$beta.pi.conv.diag$stat
== min(conv$beta.pi.conv.diag$stat),, drop = FALSE], 1)
cat(sprintf("Min Geweke statistic: %d %0.6f (%s)\n", min_t$Trt.Grp, min_t$stat,
chk_val(min_t$stat)))
}
}
if (conv$sim_type == "MH") {
cat("\nSampling Acceptance Rates:\n")
cat("==========================\n")
if (theta_mon == 1) {
cat("theta:\n")
cat("------\n")
print(sprintf("Min: %0.6f, Max: %0.6f", min(conv$theta_acc$rate),
max(conv$theta_acc$rate)))
}
if (gamma_mon == 1) {
cat("gamma:\n")
cat("------\n")
print(sprintf("Min: %0.6f, Max: %0.6f", min(conv$gamma_acc$rate),
max(conv$gamma_acc$rate)))
}
if (alpha_pi_mon == 1) {
cat("alpha.pi:\n")
cat("---------\n")
print(sprintf("Min: %0.6f, Max: %0.6f", min(conv$alpha.pi_acc$rate),
max(conv$alpha.pi_acc$rate)))
}
if (beta_pi_mon == 1) {
cat("beta.pi:\n")
cat("--------\n")
print(sprintf("Min: %0.6f, Max: %0.6f", min(conv$beta.pi_acc$rate),
max(conv$beta.pi_acc$rate)))
}
}
else {
cat("\nSampling Acceptance Rates:\n")
cat("==========================\n")
if (theta_mon == 1) {
cat("theta:\n")
cat("------\n")
print(sprintf("Min: %0.6f, Max: %0.6f", min(conv$theta_acc$rate),
max(conv$theta_acc$rate)))
}
}
}
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