skip_on_cran() m <- glm(am ~ mpg + hp + factor(cyl), data = mtcars, family = binomial() ) test_that("model_parameters.anova", { a <- anova(m, test = "Chisq") mp <- model_parameters(a) expect_named(mp, c("Parameter", "df", "Deviance", "df_error", "Deviance_error", "p")) expect_equal(mp$Deviance_error, c(43.22973, 29.67517, 19.23255, 10.48692), tolerance = 1e-3) expect_equal(mp$p, c(NA, 0.00023, 0.00123, 0.01262), tolerance = 1e-3) expect_snapshot(mp) }) test_that("model_parameters.anova", { skip_if_not_installed("car") a <- car::Anova(m, type = 3, test.statistic = "F") mp <- model_parameters(a) expect_named(mp, c("Parameter", "Sum_Squares", "df", "Mean_Square", "F", "p")) expect_equal(mp[["F"]], c(53.40138, 60.42944, 13.96887, NA), tolerance = 1e-3) }) test_that("linear hypothesis tests", { skip_if_not_installed("car") skip_if_not_installed("carData") data(Davis, package = "carData") data(Duncan, package = "carData") mod.davis <- lm(weight ~ repwt, data = Davis) ## the following are equivalent: p1 <- parameters(car::linearHypothesis(mod.davis, diag(2), c(0, 1))) p2 <- parameters(car::linearHypothesis(mod.davis, c("(Intercept) = 0", "repwt = 1"))) p3 <- parameters(car::linearHypothesis(mod.davis, c("(Intercept)", "repwt"), c(0, 1))) p4 <- parameters(car::linearHypothesis(mod.davis, c("(Intercept)", "repwt = 1"))) expect_equal(p1, p2, ignore_attr = TRUE) expect_equal(p1, p3, ignore_attr = TRUE) expect_equal(p1, p4, ignore_attr = TRUE) expect_identical(nrow(p1), 2L) expect_identical(p1$Parameter, c("(Intercept) = 0", "repwt = 1")) mod.duncan <- lm(prestige ~ income + education, data = Duncan) p <- parameters(car::linearHypothesis(mod.duncan, "1*income - 1*education + 1 = 1")) expect_identical(nrow(p), 1L) expect_identical(p$Parameter, "income - education = 0") }) test_that("print-model_parameters", { skip_if_not_installed("car") a <- car::Anova(m, type = 3, test.statistic = "F") mp <- model_parameters(a) expect_snapshot(mp) }) test_that("model_parameters_Anova.mlm", { skip_if_not_installed("car") m <- lm(cbind(hp, mpg) ~ factor(cyl) * am, data = mtcars) a <- car::Anova(m, type = 3, test.statistic = "Pillai") mp <- model_parameters(a, verbose = FALSE) expect_named(mp, c("Parameter", "df", "Statistic", "df_num", "df_error", "F", "p")) expect_equal(mp[["F"]], c(158.2578, 6.60593, 3.71327, 3.28975), tolerance = 1e-3) expect_equal(mp$Statistic, c(0.9268, 0.67387, 0.22903, 0.4039), tolerance = 1e-3) }) test_that("model_parameters_Anova.mlm", { skip_if_not_installed("MASS") skip_if_not_installed("car") data(housing, package = "MASS") m <- MASS::polr(Sat ~ Infl + Type + Cont, weights = Freq, data = housing) a <- car::Anova(m) mp <- model_parameters(a) expect_named(mp, c("Parameter", "Chi2", "df", "p")) expect_equal(mp$Chi2, c(108.2392, 55.91008, 14.30621), tolerance = 1e-3) }) test_that("model_parameters_Anova-effectsize", { skip_if_not_installed("lme4") skip_if_not_installed("effectsize", minimum_version = "0.4.3") df <- iris df$Sepal.Big <- ifelse(df$Sepal.Width >= 3, "Yes", "No") mm <- suppressMessages(lme4::lmer(Sepal.Length ~ Sepal.Big + Petal.Width + (1 | Species), data = df)) model <- anova(mm) # parameters table including effect sizes mp <- model_parameters( model, es_type = "eta", ci = 0.9, df_error = dof_satterthwaite(mm)[2:3] ) expect_identical( colnames(mp), c( "Parameter", "Sum_Squares", "df", "Mean_Square", "F", "Eta2_partial", "Eta2_CI_low", "Eta2_CI_high" ) ) expect_equal(mp$Eta2_partial, c(0.03262, 0.6778), tolerance = 1e-3) }) # XXX ----- test_that("anova type | lm", { skip_if_not_installed("car") m <- lm(mpg ~ factor(cyl) * hp + disp, mtcars) a1 <- aov(m) expect_identical(attr(model_parameters(a1), "anova_type"), 1) a1 <- anova(m) expect_identical(attr(model_parameters(a1), "anova_type"), 1) a2 <- car::Anova(m, type = 2) a3 <- car::Anova(m, type = 3) expect_identical(attr(model_parameters(a2), "anova_type"), 2) expect_message( expect_identical(attr(model_parameters(a3), "anova_type"), 3), "Type 3 ANOVAs only give" ) m <- lm(mpg ~ factor(cyl) + hp + disp, mtcars) expect_warning(model_parameters(aov(m)), regexp = NA) # no need for warning, because no interactions m <- lm(mpg ~ factor(cyl) * scale(disp, TRUE, FALSE) + scale(disp, TRUE, FALSE), mtcars, contrasts = list("factor(cyl)" = contr.helmert) ) a3 <- car::Anova(m, type = 3) expect_message( model_parameters(a3), "Type 3 ANOVAs only give" ) }) test_that("anova type | mlm", { skip_if_not_installed("car") m <- lm(cbind(mpg, drat) ~ factor(cyl) * hp + disp, mtcars) a1 <- aov(m) expect_identical(attr(model_parameters(a1), "anova_type"), 1) a1 <- anova(m) expect_identical(attr(model_parameters(a1), "anova_type"), 1) a2 <- car::Anova(m, type = 2) a3 <- car::Anova(m, type = 3) expect_identical(attr(model_parameters(a2), "anova_type"), 2) expect_identical(attr(model_parameters(a3, verbose = FALSE), "anova_type"), 3) }) test_that("anova type | glm", { skip_if_not_installed("car") m <- suppressWarnings(glm(am ~ factor(cyl) * hp + disp, mtcars, family = binomial())) a1 <- anova(m) expect_identical(attr(model_parameters(a1), "anova_type"), 1) a2 <- suppressWarnings(car::Anova(m, type = 2)) a3 <- suppressWarnings(car::Anova(m, type = 3)) expect_identical(attr(model_parameters(a2), "anova_type"), 2) expect_message( expect_identical(attr(model_parameters(a3), "anova_type"), 3), "Type 3 ANOVAs only give" ) }) test_that("anova type | lme4", { skip_if_not_installed("lmerTest") skip_if_not_installed("lme4") skip_if_not_installed("car") m1 <- lme4::lmer(mpg ~ factor(cyl) * hp + disp + (1 | gear), mtcars) suppressMessages({ m2 <- lme4::glmer(carb ~ factor(cyl) * hp + disp + (1 | gear), mtcars, family = poisson() ) }) a1 <- anova(m1) expect_identical(attr(model_parameters(a1), "anova_type"), 1) a1 <- anova(m2) expect_identical(attr(model_parameters(a1), "anova_type"), 1) a3 <- anova(lmerTest::as_lmerModLmerTest(m1)) expect_message( expect_identical(attr(model_parameters(a3), "anova_type"), 3), "Type 3 ANOVAs only give" ) a2 <- car::Anova(m1, type = 2) a3 <- car::Anova(m1, type = 3) expect_identical(attr(model_parameters(a2), "anova_type"), 2) expect_message( expect_identical(attr(model_parameters(a3), "anova_type"), 3), "Type 3 ANOVAs only give" ) a2 <- car::Anova(m2, type = 2) a3 <- car::Anova(m2, type = 3) expect_identical(attr(model_parameters(a2), "anova_type"), 2) expect_message( expect_identical(attr(model_parameters(a3), "anova_type"), 3), "Type 3 ANOVAs only give" ) }) test_that("anova type | afex + Anova.mlm", { skip_if_not_installed("afex") data(obk.long, package = "afex") suppressMessages({ m <- afex::aov_ez("id", "value", obk.long, between = c("treatment", "gender"), within = c("phase", "hour"), observed = "gender" ) }) expect_identical(attr(model_parameters(m), "anova_type"), 3) expect_identical(attr(model_parameters(m$Anova, verbose = FALSE), "anova_type"), 3) }) test_that("anova rms", { skip_if_not_installed("rms") m <- rms::ols(mpg ~ cyl + disp + hp + drat, data = mtcars) a <- anova(m) mp <- model_parameters(a) expect_identical(attr(mp, "anova_type"), 2) expect_identical(mp$Parameter, c("cyl", "disp", "hp", "drat", "Total", "Residuals")) expect_identical(colnames(mp), c("Parameter", "Sum_Squares_Partial", "df", "Mean_Square", "F", "p")) expect_equal(mp$Sum_Squares_Partial, data.frame(a)$Partial.SS, tolerance = 1e-3) }) test_that("anova rms", { skip_if_not_installed("rms") skip_if(getRversion() < "4.2.0") m <- rms::orm(mpg ~ cyl + disp + hp + drat, data = mtcars) a <- anova(m) mp <- model_parameters(a) expect_identical(attr(mp, "anova_type"), 2) expect_identical(mp$Parameter, c("cyl", "disp", "hp", "drat", "Total")) expect_named(mp, c("Parameter", "Chi2", "df", "p")) expect_equal(mp$Chi2, data.frame(a)$Chi.Square, tolerance = 1e-3) })