## ----setup, include = FALSE--------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>", fig.width = 7, fig.height = 4.5 ) ## ----fit---------------------------------------------------------------------- library(MAIHDA) data("maihda_health_data") cc <- maihda( BMI ~ Age + (1 | Gender:Race:Education), data = maihda_health_data, decomposition = "crossed-dimensions" ) cc ## ----formula------------------------------------------------------------------ cc$formula ## ----decomposition------------------------------------------------------------ cc$decomposition$additive_var # sum of the dimension random-effect variances cc$decomposition$interaction_var # the intersection random-effect variance cc$decomposition$additive_share # additive share of the between-strata variance cc$decomposition$interaction_share # the complement: the interaction share cc$decomposition$per_dim # additive variance per dimension ## ----summary------------------------------------------------------------------ summary(cc$model) ## ----plots-------------------------------------------------------------------- plot(cc, type = "vpc") # per-dimension additive + interaction + residual plot(cc, type = "effect_decomp") # additive vs. interaction, per stratum ## ----plots-ternary, eval = requireNamespace("ggtern", quietly = TRUE), warning = FALSE, message = FALSE---- plot(cc, type = "ternary") # additive / interaction / uncertainty per stratum ## ----groups, eval = FALSE----------------------------------------------------- # data("maihda_country_data") # cc_grp <- maihda( # math ~ 1 + (1 | gender:ses), # data = maihda_country_data, # group = "country", # decomposition = "crossed-dimensions" # ) # plot(cc_grp, type = "group_additive_share") # additive share by country # plot(cc_grp, type = "group_components") # additive / interaction / residual ## ----brms, eval = FALSE------------------------------------------------------- # cc_b <- maihda( # BMI ~ Age + (1 | Gender:Race:Education), # data = maihda_health_data, # engine = "brms", # decomposition = "crossed-dimensions" # ) # cc_b$decomposition$additive_share_ci ## ----context-fit-------------------------------------------------------------- data("maihda_country_data") ctx <- fit_maihda( math ~ 1 + (1 | gender:ses), data = maihda_country_data, context = "country" ) summary(ctx) ## ----context-compare---------------------------------------------------------- # Strata-only fit for comparison: its VPC may partly reflect country clustering. m0 <- fit_maihda(math ~ 1 + (1 | gender:ses), data = maihda_country_data) summary(m0)$vpc$estimate # strata-only VPC s <- summary(ctx) s$vpc$estimate # between-stratum share conditional on country s$context$vpc_context_total # the country (general contextual) share ## ----context-maihda----------------------------------------------------------- a <- maihda( math ~ 1 + (1 | gender:ses), data = maihda_country_data, context = "country" ) a ## ----context-plot------------------------------------------------------------- plot(a, type = "vpc") # stacked shares, with the context broken out plot(a, type = "context_vpc") # stratum vs. context variances side by side