## ----setup, include = FALSE--------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>", fig.width = 7, fig.height = 4.5 ) ## ----data--------------------------------------------------------------------- library(MAIHDA) data("maihda_country_data") country_counts <- as.data.frame(table(maihda_country_data$country)) names(country_counts) <- c("country", "n") country_counts table(maihda_country_data$gender, maihda_country_data$ses) ## ----one-call----------------------------------------------------------------- # gender + ses are written as additive fixed effects (the adjusted model); maihda() # derives the null by dropping them, both overall and within each country. analysis <- maihda( math ~ gender + ses + (1 | gender:ses), data = maihda_country_data, group = "country" ) analysis ## ----group-table-------------------------------------------------------------- group_results <- as.data.frame(analysis$groups) group_results[order(group_results$vpc, decreasing = TRUE), c("group", "n", "n_strata", "vpc", "var_between", "var_residual", "pcv", "status")] ## ----group-vpc-plot----------------------------------------------------------- plot(analysis, type = "group_vpc") ## ----group-components-plot---------------------------------------------------- plot(analysis, type = "group_components") ## ----group-between-variance-plot---------------------------------------------- plot(analysis, type = "group_between_variance") ## ----group-pcv-plot----------------------------------------------------------- plot(analysis, type = "group_pcv") ## ----direct-workflow, eval = FALSE-------------------------------------------- # group_cmp <- compare_maihda_groups( # math ~ 1 + (1 | gender:ses), # data = maihda_country_data, # group = "country" # ) # # group_cmp # plot(group_cmp, type = "vpc") # plot(group_cmp, type = "components") # plot(group_cmp, type = "pcv") ## ----bootstrap-example, eval = FALSE------------------------------------------ # group_cmp_boot <- compare_maihda_groups( # math ~ 1 + (1 | gender:ses), # data = maihda_country_data, # group = "country", # bootstrap = TRUE, # n_boot = 500 # ) # # plot(group_cmp_boot, type = "vpc")