test_that("encoding before model", { knn_set <- readRDS(test_path("data", "knn_set.rds")) knn_grid <- readRDS(test_path("data", "knn_grid.rds")) knn_encoded <- tune:::encode_set(knn_grid, knn_set) expect_true(all(knn_encoded$K >= 0 & knn_encoded$K <= 1)) expect_true(all(knn_encoded$exponent >= 0 & knn_encoded$exponent <= 1)) expect_true(is.factor(knn_encoded$weight_func)) expect_equal(levels(knn_encoded$weight_func), dials::weight_func()$values) }) # ------------------------------------------------------------------------------ test_that("GP fit - svm", { svm_results <- readRDS(test_path("data", "svm_results.rds")) svm_set <- attributes(svm_results)$parameters svm_gp <- tune:::fit_gp( collect_metrics(svm_results), pset = svm_set, metric = "accuracy", control = control_bayes(verbose = TRUE) ) expect_equal(class(svm_gp), "GP") expect_equal( colnames(svm_gp$X), c("cost", "`%^*#`", "scale_factor") ) }) # ------------------------------------------------------------------------------ test_that("GP fit - knn", { knn_gp <- readRDS(test_path("data", "knn_gp.rds")) knn_cols <- c( "K", "weight_funcrectangular", "weight_functriangular", "weight_funcepanechnikov", "weight_funcbiweight", "weight_functriweight", "weight_funccos", "weight_funcinv", "weight_funcgaussian", "weight_funcrank", "weight_funcoptimal", "exponent" ) expect_equal(class(knn_gp), "GP") expect_equal(colnames(knn_gp$X), knn_cols) }) # ------------------------------------------------------------------------------ test_that("GP scoring", { svm_results <- readRDS(test_path("data", "svm_results.rds")) svm_set <- attributes(svm_results)$parameters ctrl <- control_bayes() curr <- collect_metrics(svm_results) %>% dplyr::filter(.metric == "accuracy") %>% mutate(.iter = 0) svm_gp <- tune:::fit_gp( collect_metrics(svm_results), pset = svm_set, metric = "accuracy", control = ctrl ) svm_scores <- tune:::pred_gp( svm_gp, pset = svm_set, size = 20, current = curr, control = ctrl ) expect_true(tibble::is_tibble(svm_scores)) expect_equal( colnames(svm_scores), c("cost", "%^*#", "scale_factor", ".mean", ".sd") ) expect_equal(nrow(svm_scores), 20) })