## ----setup, include=FALSE----------------------------------------------------- knitr::opts_chunk$set(echo = TRUE, eval = FALSE) ## ----------------------------------------------------------------------------- # fit_mcmc <- mdl$sample() # fit_map <- mdl$optimize() # fit_vb <- mdl$variational() # fit_cl <- mdl$classic() ## ----------------------------------------------------------------------------- # library(BayesRTMB) # data(debate) # # mdl <- rtmb_glmer( # sat ~ talk + perf + (1 | group), # data = debate, # family = "gaussian", # prior = prior_normal() # ) ## ----------------------------------------------------------------------------- # fit_map <- mdl$optimize() # fit_map ## ----------------------------------------------------------------------------- # fit_mcmc <- mdl$sample( # sampling = 1000, # warmup = 1000, # chains = 4 # ) # # fit_mcmc$summary() ## ----------------------------------------------------------------------------- # fit_map <- mdl$optimize(laplace = TRUE) ## ----------------------------------------------------------------------------- # fit_vb <- mdl$variational( # method = "meanfield", # iter = 5000 # ) ## ----------------------------------------------------------------------------- # mdl_flat <- rtmb_glmer( # sat ~ talk + perf + (1 | group), # data = debate, # family = "gaussian", # prior = prior_flat() # ) # # fit_cl <- mdl_flat$classic() ## ----------------------------------------------------------------------------- # rtmb_glmer(y ~ x + (1 | id), data = dat, family = "gaussian") ## ----------------------------------------------------------------------------- # rtmb_glmer(y ~ x + (x | id), data = dat, family = "gaussian") ## ----------------------------------------------------------------------------- # rtmb_glmer(y ~ x + (1 | subject) + (1 | item), # data = dat, # family = "bernoulli" # ) ## ----------------------------------------------------------------------------- # mdl_int <- rtmb_glmer( # sat ~ talk * perf + (1 | group), # data = debate, # family = "gaussian", # prior = prior_normal() # ) # # fit_int <- mdl_int$sample() # # ce <- conditional_effects(fit_int, effect = "talk:perf") # plot(ce) ## ----------------------------------------------------------------------------- # simple_effects(fit_int, effect = "talk:perf") ## ----------------------------------------------------------------------------- # mdl_bin <- rtmb_glmer( # y ~ x + (1 | id), # data = dat, # family = "bernoulli", # prior = prior_normal() # ) ## ----------------------------------------------------------------------------- # mdl_wide <- rtmb_glmer( # cbind(y_t1, y_t2, y_t3) ~ cond + (1 | id), # data = dat_wide, # family = "gaussian", # within = list(time = c("t1", "t2", "t3")), # prior = prior_normal() # ) ## ----------------------------------------------------------------------------- # mdl_fac <- rtmb_glmer( # y ~ cond * time + (1 | id), # data = dat, # family = "gaussian", # factors = c("cond", "time"), # prior = prior_normal() # ) ## ----------------------------------------------------------------------------- # mdl_cwc <- rtmb_glmer( # y ~ x + x_cwc + (1 | group), # data = dat, # family = "gaussian", # cwc = list(cluster = "group", pars = "x"), # prior = prior_normal() # ) ## ----------------------------------------------------------------------------- # mdl_flat <- rtmb_glmer( # y ~ x + (1 | id), # data = dat, # family = "gaussian", # prior = prior_flat() # ) ## ----------------------------------------------------------------------------- # mdl_norm <- rtmb_glmer( # y ~ x + (1 | id), # data = dat, # family = "gaussian", # prior = prior_normal() # ) ## ----------------------------------------------------------------------------- # mdl_weak <- rtmb_glmer( # y ~ x + (1 | id), # data = dat, # family = "gaussian", # prior = prior_weak(y_range = c(1, 5)) # ) ## ----------------------------------------------------------------------------- # mdl_rhs <- rtmb_glmer( # y ~ x1 + x2 + x3 + (1 | id), # data = dat, # family = "gaussian", # prior = prior_rhs(y_range = c(1, 5)) # ) ## ----------------------------------------------------------------------------- # mdl_jzs <- rtmb_ttest( # y ~ group, # data = dat, # prior = prior_jzs() # ) ## ----------------------------------------------------------------------------- # mdl_ar1 <- rtmb_glmer( # y ~ time + cond, # data = dat, # family = "gaussian", # resid_corr = "ar1", # resid_time = "time", # resid_group = "id", # prior = prior_normal() # ) ## ----------------------------------------------------------------------------- # mdl_aov <- rtmb_lmer( # y ~ cond * time + (1 | id), # data = dat, # prior = prior_flat() # ) # # fit_aov <- mdl_aov$classic() # anova(fit_aov) ## ----------------------------------------------------------------------------- # emm <- lsmeans(fit_aov, specs = "cond") # emm # plot(emm) ## ----------------------------------------------------------------------------- # mdl$print_code() ## ----------------------------------------------------------------------------- # fit_full <- mdl$sample() # fit_full$bridgesampling() ## ----------------------------------------------------------------------------- # bf <- fit_full$bayes_factor(fixed = list("b[talk]" = 0)) # bf