source(testthat::test_path("test-helpers.R")) test_that("step_pca_sparse_bayes", { skip_if_not_installed("VBsparsePCA") skip_if_not_installed("modeldata") data(cells, package = "modeldata") cells$case <- cells$class <- NULL cells <- as.data.frame(scale(cells)) split <- seq.int(1, 2019, by = 10) tr <- cells[-split, ] te <- cells[split, ] rec <- recipe(~., data = tr) %>% step_pca_sparse_bayes( all_predictors(), num_comp = 4, prior_slab_dispersion = 1 / 2, prior_mixture_threshold = 1 / 15 ) %>% prep() direct_mod <- VBsparsePCA::VBsparsePCA( as.matrix(tr), lambda = 1 / 2, r = 4, threshold = 1 / 15 ) direct_coef <- svd(direct_mod$loadings)$u embed_coef <- rec$steps[[1]]$res vars <- rownames(embed_coef) dimnames(embed_coef) <- NULL expect_equal(abs(direct_coef), abs(embed_coef), tolerance = 0.1) tidy_coef <- tidy(rec, number = 1) # test a few values expect_equal( tidy_coef$value[ tidy_coef$terms == "angle_ch_1" & tidy_coef$component == "PC1" ], embed_coef[which(vars == "angle_ch_1"), 1] ) expect_equal( tidy_coef$value[ tidy_coef$terms == "total_inten_ch_3" & tidy_coef$component == "PC3" ], embed_coef[which(vars == "total_inten_ch_3"), 3] ) expect_snapshot(rec) }) test_that("check_name() is used", { skip_if_not_installed("VBsparsePCA") skip_if_not_installed("modeldata") data(cells, package = "modeldata") cells$case <- cells$class <- NULL cells <- as.data.frame(scale(cells)) split <- seq.int(1, 2019, by = 10) tr <- cells[-split, ] te <- cells[split, ] dat <- tr dat$PC1 <- dat$var_inten_ch_1 rec <- rec <- recipe(~., data = dat) %>% step_pca_sparse_bayes( all_predictors(), num_comp = 4, prior_slab_dispersion = 1 / 2, prior_mixture_threshold = 1 / 15 ) expect_snapshot( error = TRUE, prep(rec, training = dat) ) }) test_that("tunable", { rec <- recipe(~., data = mtcars) %>% step_pca_sparse_bayes(all_predictors()) rec_param <- tunable.step_pca_sparse_bayes(rec$steps[[1]]) expect_equal( rec_param$name, c("num_comp", "prior_slab_dispersion", "prior_mixture_threshold") ) expect_true(all(rec_param$source == "recipe")) expect_true(is.list(rec_param$call_info)) expect_equal(nrow(rec_param), 3) expect_equal( names(rec_param), c("name", "call_info", "source", "component", "component_id") ) }) test_that("Do nothing for num_comps = 0 and keep_original_cols = FALSE", { # https://github.com/tidymodels/recipes/issues/1152 rec <- recipe(carb ~ ., data = mtcars) %>% step_pca_sparse_bayes(all_predictors(), num_comp = 0, keep_original_cols = FALSE) %>% prep() res <- bake(rec, new_data = NULL) expect_identical(res, tibble::as_tibble(mtcars)) }) # Infrastructure --------------------------------------------------------------- test_that("bake method errors when needed non-standard role columns are missing", { skip_if_not_installed("modeldata") data(cells, package = "modeldata") cells$case <- cells$class <- NULL cells <- as.data.frame(scale(cells)) split <- seq.int(1, 2019, by = 10) tr <- cells[-split, ] te <- cells[split, ] rec <- recipe(~., data = tr) %>% step_pca_sparse_bayes( avg_inten_ch_1, avg_inten_ch_2, avg_inten_ch_3, avg_inten_ch_4, num_comp = 2, prior_slab_dispersion = 1 / 2, prior_mixture_threshold = 1 / 15 ) %>% update_role(avg_inten_ch_1, new_role = "potato") %>% update_role_requirements(role = "potato", bake = FALSE) rec_trained <- prep(rec, training = tr, verbose = FALSE) expect_error( bake(rec_trained, new_data = tr[, -3]), class = "new_data_missing_column" ) }) test_that("empty printing", { rec <- recipe(mpg ~ ., mtcars) rec <- step_pca_sparse_bayes(rec) expect_snapshot(rec) rec <- prep(rec, mtcars) expect_snapshot(rec) }) test_that("empty selection prep/bake is a no-op", { rec1 <- recipe(mpg ~ ., mtcars) rec2 <- step_pca_sparse_bayes(rec1) rec1 <- prep(rec1, mtcars) rec2 <- prep(rec2, mtcars) baked1 <- bake(rec1, mtcars) baked2 <- bake(rec2, mtcars) expect_identical(baked1, baked2) }) test_that("empty selection tidy method works", { rec <- recipe(mpg ~ ., mtcars) rec <- step_pca_sparse_bayes(rec) expect <- tibble( terms = character(), value = double(), component = character(), id = character() ) expect_identical(tidy(rec, number = 1), expect) rec <- prep(rec, mtcars) expect_identical(tidy(rec, number = 1), expect) }) test_that("keep_original_cols works", { skip_if_not_installed("VBsparsePCA") skip_if_not_installed("modeldata") data(cells, package = "modeldata") cells$case <- cells$class <- NULL cells <- as.data.frame(scale(cells)) new_names <- c("PC1") rec <- recipe(~., data = cells) %>% step_pca_sparse_bayes(all_predictors(), num_comp = 1, keep_original_cols = FALSE) rec <- prep(rec) res <- bake(rec, new_data = NULL) expect_equal( colnames(res), new_names ) rec <- recipe(~., data = cells) %>% step_pca_sparse_bayes(all_predictors(), num_comp = 1, keep_original_cols = TRUE) rec <- prep(rec) res <- bake(rec, new_data = NULL) expect_equal( colnames(res), c(names(cells), new_names) ) }) test_that("keep_original_cols - can prep recipes with it missing", { skip_if_not_installed("VBsparsePCA") skip_if_not_installed("modeldata") data(cells, package = "modeldata") cells$case <- cells$class <- NULL cells <- as.data.frame(scale(cells)) rec <- recipe(~., data = cells) %>% step_pca_sparse_bayes(all_predictors(), num_comp = 1) rec$steps[[1]]$keep_original_cols <- NULL expect_snapshot( rec <- prep(rec) ) expect_error( bake(rec, new_data = cells), NA ) }) test_that("printing", { skip_if_not_installed("modeldata") data(cells, package = "modeldata") cells$case <- cells$class <- NULL cells <- as.data.frame(scale(cells)) split <- seq.int(1, 2019, by = 10) tr <- cells[-split, ] te <- cells[split, ] rec <- recipe(~., data = tr[, -5]) %>% step_pca_sparse_bayes(all_predictors()) expect_snapshot(print(rec)) expect_snapshot(prep(rec)) }) test_that("tunable is setup to works with extract_parameter_set_dials", { skip_if_not_installed("dials") rec <- recipe(~., data = mtcars) %>% step_pca_sparse_bayes( all_predictors(), num_comp = hardhat::tune(), prior_slab_dispersion = hardhat::tune(), prior_mixture_threshold = hardhat::tune() ) params <- extract_parameter_set_dials(rec) expect_s3_class(params, "parameters") expect_identical(nrow(params), 3L) })