## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>", fig.width = 7, fig.height = 4.5, warning = FALSE, message = FALSE ) have_mcmc <- requireNamespace("MCMCpack", quietly = TRUE) && requireNamespace("coda", quietly = TRUE) knitr::opts_chunk$set(eval = have_mcmc) ## ----------------------------------------------------------------------------- # library(BetaDanish) # data("remission") # fit_bayes <- bayes_betadanish( # time = remission$time, # status = remission$status, # submodel = TRUE, # burnin = 2000, mcmc = 5000, # tune = 0.5, # seed = 1 # ) # print(fit_bayes) ## ----------------------------------------------------------------------------- # draws <- fit_bayes$draws # op <- par(mfrow = c(3, 1), mar = c(3, 4, 2, 1)) # coda::traceplot(draws) # par(op) ## ----------------------------------------------------------------------------- # post_mean <- summary(draws)$statistics[, "Mean"] # b <- post_mean["b"]; c <- post_mean["c"]; k <- post_mean["k"] # km <- survival::survfit(survival::Surv(time, status) ~ 1, data = remission) # plot(km, conf.int = FALSE, xlab = "Time (months)", # ylab = "Survival probability", # main = "Posterior mean ED fit on remission data") # t_grid <- seq(0.1, max(remission$time), length.out = 200) # S_post <- pbetadanish(t_grid, a = 1, b = b, c = c, k = k, # lower.tail = FALSE) # lines(t_grid, S_post, col = "red", lwd = 2) # legend("topright", # legend = c("Kaplan-Meier", "Posterior-mean ED"), # col = c("black", "red"), lty = 1, lwd = c(1, 2), bty = "n") ## ----------------------------------------------------------------------------- # fit_mle <- fit_betadanish(survival::Surv(time, status) ~ 1, # data = remission, submodel = TRUE, # n_starts = 3) # cbind( # MLE = round(coef(fit_mle), 4), # Bayes_post_mean = round(post_mean, 4) # )