test_that("PredictionDataClassif", { task = tsk("iris") learner = lrn("classif.featureless", predict_type = "prob") p = learner$train(task)$predict(task) pdata = p$data expect_s3_class(pdata, "PredictionDataClassif") expect_integer(pdata$row_ids, any.missing = FALSE) expect_factor(pdata$truth, levels = task$class_names, any.missing = FALSE) expect_factor(pdata$response, levels = task$class_names, any.missing = FALSE) expect_matrix(pdata$prob, nrows = task$nrow, ncols = length(task$class_names), any.missing = FALSE) expect_s3_class(c(pdata, pdata), "PredictionDataClassif") expect_prediction(as_prediction(pdata)) expect_equal(as.data.table(p), as.data.table(as_prediction(pdata))) pdata = filter_prediction_data(pdata, row_ids = 1:3) expect_set_equal(pdata$row_ids, 1:3) expect_factor(pdata$truth, len = 3) expect_factor(pdata$response, len = 3) expect_matrix(pdata$prob, nrows = 3) }) test_that("row sums of prob sums up to 1 ", { pdata = new_prediction_data(list(row_ids = 1:2, truth = factor(c("a", "b")), response = c("a", "b"), prob = matrix(c(0.5, 0.5, 0.5, 1), 2)), "classif") expect_error(check_prediction_data(pdata), "sum up") })