## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>" ) build_rich_tables <- identical(Sys.getenv("IN_PKGDOWN"), "true") pkgdown_dark_gt <- function(tab) { tab |> gt::opt_css( css = paste( ".gt_table, .gt_heading, .gt_col_headings, .gt_col_heading,", ".gt_column_spanner_outer, .gt_column_spanner, .gt_title,", ".gt_subtitle, .gt_sourcenotes, .gt_sourcenote {", " background-color: transparent !important;", " color: currentColor !important;", "}", sep = "\n" ) ) } ## ----setup-------------------------------------------------------------------- library(spicy) ## ----basic-------------------------------------------------------------------- table_continuous_lm( sochealth, select = c(wellbeing_score, bmi, life_sat_health), by = sex ) ## ----robust------------------------------------------------------------------- table_continuous_lm( sochealth, select = c(wellbeing_score, bmi), by = sex, vcov = "HC3", statistic = TRUE ) ## ----cluster, eval = requireNamespace("clubSandwich", quietly = TRUE)--------- table_continuous_lm( sleep, select = extra, by = group, vcov = "CR2", cluster = ID, statistic = TRUE ) ## ----bootstrap, eval = FALSE-------------------------------------------------- # table_continuous_lm( # sochealth, # select = wellbeing_score, # by = sex, # vcov = "bootstrap", # boot_n = 1000 # default # ) ## ----weights------------------------------------------------------------------ table_continuous_lm( sochealth, select = c(wellbeing_score, bmi), by = education, weights = weight, show_weighted_n = TRUE ) ## ----numeric-by--------------------------------------------------------------- table_continuous_lm( sochealth, select = c(wellbeing_score, bmi), by = age, vcov = "HC3" ) ## ----es-d--------------------------------------------------------------------- table_continuous_lm( sochealth, select = c(wellbeing_score, bmi), by = smoking, effect_size = "d" ) ## ----es-g--------------------------------------------------------------------- table_continuous_lm( sochealth, select = c(wellbeing_score, bmi), by = smoking, effect_size = "g" ) ## ----es-omega2---------------------------------------------------------------- table_continuous_lm( sochealth, select = c(wellbeing_score, bmi), by = education, effect_size = "omega2" ) ## ----es-f2-------------------------------------------------------------------- table_continuous_lm( sochealth, select = c(wellbeing_score, bmi), by = age, effect_size = "f2" ) ## ----es-ci-------------------------------------------------------------------- table_continuous_lm( sochealth, select = c(wellbeing_score, bmi), by = smoking, effect_size = "g", effect_size_ci = TRUE ) ## ----es-ci-raw---------------------------------------------------------------- table_continuous_lm( sochealth, select = wellbeing_score, by = smoking, effect_size = "g", effect_size_ci = TRUE, output = "data.frame" ) ## ----es-ci-long--------------------------------------------------------------- out <- table_continuous_lm( sochealth, select = wellbeing_score, by = smoking, effect_size = "g", effect_size_ci = TRUE, output = "long" ) out[, c("variable", "es_type", "es_value", "es_ci_lower", "es_ci_upper")] ## ----polish------------------------------------------------------------------- table_continuous_lm( sochealth, select = c(wellbeing_score, bmi), by = sex, labels = c( wellbeing_score = "WHO-5 wellbeing (0-100)", bmi = "Body-mass index (kg/m²)" ), effect_size = "g", effect_size_ci = TRUE, decimal_mark = "," ) ## ----gt-output, eval = build_rich_tables-------------------------------------- # pkgdown_dark_gt( # table_continuous_lm( # sochealth, # select = c(wellbeing_score, bmi, life_sat_health), # by = sex, # vcov = "HC3", # statistic = TRUE, # output = "gt" # ) # ) ## ----tidy-glance-------------------------------------------------------------- out <- table_continuous_lm( sochealth, select = c(wellbeing_score, bmi), by = sex, effect_size = "g", effect_size_ci = TRUE ) # One row per estimated parameter: emmean per level, contrast for # binary predictors, slope for numeric predictors. broom::tidy(out) # One row per outcome with model-level statistics: r.squared, # adj.r.squared, F / t, df, p.value, nobs, weighted_n, plus the # effect-size summary. broom::glance(out)