library(tidySEM) library(lavaan) fit <- sem("mpg ~ a * am", data = mtcars) tmp <- table_results(fit, columns = NULL) test_that("table_results() returns all labels", { expect_true(all(c("lavaan_label", "label") %in% names(tmp))) expect_true(tmp$lavaan_label[1] == "a") }) df <- HolzingerSwineford1939 names(df)[grepl("^x", names(df))] <- c("vis_1", "vis_2", "vis_3", "tex_1", "tex_2", "tex_3", "spe_1", "spe_2", "spe_3") dict <- tidy_sem(df) expect_true(all(dict$dictionary$scale[-c(1:6)] == rep(c("vis", "tex", "spe"), each = 3))) measurement(dict, meanstructure = TRUE) -> model res_lav <- sem(as_lavaan(model), data = df) tb_lav <- table_results(res_lav, columns = NULL) expect_true(nrow(tb_lav) == 36) if(isTRUE(getOption("test_mplus"))){ test_that("table_results() returns all labels for mplus", { the_test <- "mplus_labels" old_wd <- getwd() test_dir <- file.path(tempdir(), the_test) dir.create(test_dir) setwd(test_dir) on.exit({unlink(test_dir, recursive = TRUE); setwd(old_wd)}, add = TRUE) res_mplus <- mplusModeler(mplusObject(MODEL = "mpg ON am (a);", OUTPUT = "standardized;", rdata = mtcars), modelout = "test.inp", run = 1L) tb_mplus <- table_results(res_mplus, columns = NULL) expect_true("label" %in% names(tmp)) }) }