## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>" ) ## ----setup-------------------------------------------------------------------- library(contentValidity) ## ----------------------------------------------------------------------------- data(cvi_example) head(cvi_example) ## ----------------------------------------------------------------------------- icvi(cvi_example) ## ----------------------------------------------------------------------------- mod_kappa(cvi_example) ## ----------------------------------------------------------------------------- aiken_v(cvi_example, lo = 1, hi = 4) ## ----------------------------------------------------------------------------- scvi_ave(cvi_example) # average of I-CVIs scvi_ua(cvi_example) # proportion of items with universal agreement ## ----------------------------------------------------------------------------- result <- content_validity(cvi_example) result ## ----------------------------------------------------------------------------- result$items result$scale ## ----------------------------------------------------------------------------- apa_table(result) ## ----results = "asis"--------------------------------------------------------- apa_table(result, format = "markdown") ## ----------------------------------------------------------------------------- # 10 experts rating 3 items on Lawshe's scale lawshe_ratings <- matrix( c(1, 1, 1, 1, 1, 1, 1, 1, 2, 2, # 8 of 10 essential 1, 1, 1, 2, 2, 2, 2, 3, 3, 3, # 3 of 10 essential 1, 1, 1, 1, 1, 1, 1, 1, 1, 1), # 10 of 10 essential nrow = 10, dimnames = list(NULL, paste0("item", 1:3)) ) cvr(lawshe_ratings) ## ----------------------------------------------------------------------------- cvr_critical(n_experts = 10) # one-tailed alpha = 0.05 cvr_critical(n_experts = 10, alpha = 0.01) ## ----------------------------------------------------------------------------- icvi(cvi_example, ci = TRUE, n_boot = 1000, seed = 1) ## ----------------------------------------------------------------------------- gwet_ac1(cvi_example) gwet_ac2(cvi_example, categories = 1:4) ## ----------------------------------------------------------------------------- # Anticipating I-CVI ≈ 0.85 with target half-width ≤ 0.10 cv_sample_size_icvi(expected = 0.85, half_width = 0.10) # Sensitivity table across plausible expected I-CVI values sapply(seq(0.70, 0.95, by = 0.05), function(p) { cv_sample_size_icvi(expected = p, half_width = 0.10) }) ## ----------------------------------------------------------------------------- # Treat items 1-5 as subscale "Cognitive" and 6-10 as "Somatic" result_multi <- content_validity( cvi_example, subscale = c(rep("Cognitive", 5), rep("Somatic", 5)) ) result_multi$subscales ## ----fig.width = 6, fig.height = 4-------------------------------------------- plot(result_multi, y_index = "gwet_ac2") ## ----fig.width = 6, fig.height = 4-------------------------------------------- # Flag only items below the AC2 threshold (ignores I-CVI verdict) plot(result_multi, y_index = "gwet_ac2", flag_logic = "y_index") # Flag only items below the I-CVI threshold (ignores AC2 verdict) plot(result_multi, y_index = "gwet_ac2", flag_logic = "icvi") ## ----------------------------------------------------------------------------- apa_table(result_multi, interpretation_index = "gwet_ac2") ## ----eval = FALSE------------------------------------------------------------- # citation("contentValidity")