## ----setup, include=FALSE----------------------------------------------------- knitr::opts_chunk$set(echo = TRUE, eval = FALSE) ## ----eval=FALSE--------------------------------------------------------------- # install.packages("BayesRTMB") ## ----eval=FALSE--------------------------------------------------------------- # install.packages("pak") # pak::pak("norimune/BayesRTMB") ## ----eval=FALSE--------------------------------------------------------------- # install.packages("remotes") # remotes::install_github("norimune/BayesRTMB") ## ----eval=FALSE--------------------------------------------------------------- # pkgbuild::check_build_tools(debug = TRUE) ## ----eval=FALSE--------------------------------------------------------------- # library(BayesRTMB) # # Trial <- 10 # Y <- 6 # # dat <- list(Trial = Trial, Y = Y) # # code <- rtmb_code( # parameters = { # theta <- Dim(lower = 0, upper = 1) # }, # model = { # Y ~ binomial(Trial, theta) # theta ~ beta(1, 1) # } # ) ## ----eval=FALSE--------------------------------------------------------------- # mdl <- rtmb_model(dat, code) ## ----eval=FALSE--------------------------------------------------------------- # fit_map <- mdl$optimize() # fit_map ## ----eval=FALSE--------------------------------------------------------------- # set.seed(1) # # fit_mcmc <- mdl$sample( # sampling = 200, # warmup = 200, # chains = 2 # ) # # fit_mcmc$summary() ## ----eval=FALSE--------------------------------------------------------------- # install.packages(c("future", "future.apply", "progressr")) ## ----eval=FALSE--------------------------------------------------------------- # fit_mcmc <- mdl$sample( # sampling = 1000, # warmup = 1000, # chains = 4, # parallel = TRUE # ) ## ----eval=FALSE--------------------------------------------------------------- # theta_draws <- fit_mcmc$draws("theta") # # plot_dens(theta_draws) # plot_trace(theta_draws) # plot_acf(theta_draws) ## ----eval=FALSE--------------------------------------------------------------- # data(debate) # # mdl_lm <- rtmb_lm( # sat ~ talk * perf, # data = debate, # gmc = "all", # prior = prior_normal() # ) # # fit_lm <- mdl_lm$optimize( # se_method = "sampling", # num_samples = 1000, # seed = 1 # ) # fit_lm ## ----eval=FALSE--------------------------------------------------------------- # fit_lm$draws(c("b[talk]", "b[perf]", "b[talk:perf]")) |> # plot_forest(point_estimate = "MAP") ## ----eval=FALSE--------------------------------------------------------------- # ce <- conditional_effects(fit_lm, effect = "talk:perf") # plot(ce) ## ----eval=FALSE--------------------------------------------------------------- # simple_effects(fit_lm, effect = "talk:perf") ## ----eval=FALSE--------------------------------------------------------------- # mdl_t <- rtmb_ttest( # sat ~ cond, # data = debate, # prior = prior_flat() # ) # # fit_t_classic <- mdl_t$classic() # fit_t_classic ## ----eval=FALSE--------------------------------------------------------------- # mdl_t_jzs <- rtmb_ttest( # sat ~ cond, # data = debate, # prior = prior_jzs() # ) # # set.seed(2) # # fit_t_jzs <- mdl_t_jzs$sample() # # bf <- fit_t_jzs$bayes_factor(fixed = list(delta = 0)) # bf