test_that("Calculations are correct", { ex_dat <- generate_numeric_test_data() # Note: Uses `quantile(type = 7)` when case weights aren't provided expect_equal( rpiq_vec(truth = ex_dat$obs, estimate = ex_dat$pred), stats::IQR(ex_dat$obs) / sqrt(mean((ex_dat$obs - ex_dat$pred)^2)) ) }) test_that("both interfaces gives the same results", { ex_dat <- generate_numeric_test_data() expect_identical( rpiq_vec(ex_dat$obs, ex_dat$pred), rpiq(ex_dat, obs, pred)[[".estimate"]], ) }) test_that("Calculations handles NAs", { ex_dat <- generate_numeric_test_data() na_ind <- 1:10 ex_dat$pred[na_ind] <- NA expect_identical( rpiq_vec(ex_dat$obs, ex_dat$pred, na_rm = FALSE), NA_real_ ) expect_equal( rpiq_vec(truth = ex_dat$obs, estimate = ex_dat$pred), stats::IQR(ex_dat$obs[-na_ind]) / sqrt(mean((ex_dat$obs[-na_ind] - ex_dat$pred[-na_ind])^2)) ) }) test_that("Case weights calculations are correct", { solubility_test$weights <- read_weights_solubility_test() expect_equal( rpiq_vec( truth = solubility_test$solubility, estimate = solubility_test$prediction, case_weights = solubility_test$weights ), 3.401406885440771965534 ) }) test_that("works with hardhat case weights", { count_results <- data_counts()$basic count_results$weights <- c(1, 2, 1, 1, 2, 1) df <- count_results imp_wgt <- hardhat::importance_weights(df$weights) freq_wgt <- hardhat::frequency_weights(df$weights) expect_no_error( rpiq_vec(df$count, df$pred, case_weights = imp_wgt) ) expect_no_error( rpiq_vec(df$count, df$pred, case_weights = freq_wgt) ) }) test_that("na_rm argument check", { expect_snapshot( error = TRUE, rpiq_vec(1, 1, na_rm = "yes") ) }) test_that("range values are correct", { direction <- metric_direction(rpiq) range <- metric_range(rpiq) perfect <- ifelse(direction == "minimize", range[1], range[2]) worst <- ifelse(direction == "minimize", range[2], range[1]) df <- tibble::tibble( truth = c(5, 6, 2, 6, 4, 1, 3) ) df$estimate <- df$truth df$off <- df$truth + 1 expect_identical( rpiq_vec(df$truth, df$estimate), perfect ) if (direction == "minimize") { expect_gt(rpiq_vec(df$truth, df$off), perfect) expect_lt(rpiq_vec(df$truth, df$off), worst) } if (direction == "maximize") { expect_lt(rpiq_vec(df$truth, df$off), perfect) expect_gt(rpiq_vec(df$truth, df$off), worst) } })