test_that( desc = "contingency_table works", code = { # contingency tab - without NAs --------------------------------- set.seed(123) df1 <- suppressWarnings(contingency_table( data = mtcars, x = am, y = cyl, digits = 5L, conf.level = 0.99 )) set.seed(123) expect_snapshot(select(df1, -expression)) expect_snapshot(df1[["expression"]]) set.seed(123) df2 <- contingency_table( data = as.data.frame(Titanic), x = Sex, y = Survived, counts = Freq ) set.seed(123) expect_snapshot(select(df2, -expression)) expect_snapshot(df2[["expression"]]) # contingency tab - with NAs -------------------------------------- # introduce NAs set.seed(123) df3 <- suppressWarnings(contingency_table( data = msleep, x = vore, y = conservation, conf.level = 0.990 )) set.seed(123) expect_snapshot(select(df3, -expression)) expect_snapshot(df3[["expression"]]) } ) test_that( desc = "paired contingency_table works ", code = { # paired data - without NAs and counts data ---------------------------- paired_data <- tibble( response_before = structure(c(1L, 2L, 1L, 2L), levels = c("no", "yes"), class = "factor"), response_after = structure(c(1L, 1L, 2L, 2L), levels = c("no", "yes"), class = "factor"), Freq = c(65L, 25L, 5L, 5L) ) set.seed(123) df1 <- suppressWarnings( contingency_table( data = paired_data, x = response_before, y = response_after, paired = TRUE, counts = Freq, digits = 5 ) ) set.seed(123) expect_snapshot(select(df1, -expression)) expect_snapshot(df1[["expression"]]) # paired data with NAs --------------------------------------------- paired_data %<>% tidyr::uncount(weights = Freq) # deliberately introduce NAs set.seed(123) paired_data[1, 1] <- NA paired_data[12, 1] <- NA paired_data[22, 1] <- NA paired_data[24, 1] <- NA paired_data[65, 1] <- NA set.seed(123) df2 <- suppressWarnings( contingency_table( data = paired_data, x = response_before, y = response_after, paired = TRUE, alternative = "greater", digits = 3L, conf.level = 0.90 ) ) set.seed(123) expect_snapshot(select(df2, -expression)) expect_snapshot(df2[["expression"]]) } ) test_that( desc = "Goodness of Fit contingency_table works without counts", code = { # one-sample test (without NAs) ------------------------------------- set.seed(123) df1 <- suppressWarnings(contingency_table( data = mtcars, x = am, conf.level = 0.99, digits = 5 )) set.seed(123) expect_snapshot(select(df1, -expression)) expect_snapshot(df1[["expression"]]) set.seed(123) df2 <- contingency_table( data = as.data.frame(Titanic), x = Sex, counts = Freq, alternative = "greater" ) set.seed(123) expect_snapshot(select(df2, -expression)) expect_snapshot(df2[["expression"]]) # one-sample test (with NAs) ------------------------------------- set.seed(123) df3 <- contingency_table( data = msleep, x = vore, ratio = c(0.2, 0.2, 0.3, 0.3) ) set.seed(123) expect_snapshot(select(df3, -expression)) expect_snapshot(df3[["expression"]]) # edge case expect_null(contingency_table(data.frame(x = "x"), x, type = "bayes")) } ) test_that( desc = "bayesian (proportion test)", code = { # bayesian (proportion test) -------------------------------------- set.seed(123) df1 <- contingency_table( data = mtcars, x = am, type = "bayes" ) expect_snapshot(select(df1, -expression)) expect_snapshot(df1[["expression"]]) set.seed(123) df2 <- contingency_table( type = "bayes", data = mtcars, x = cyl, prior.concentration = 10 ) expect_snapshot(select(df2, -expression)) expect_snapshot(df2[["expression"]]) } ) test_that( desc = "bayesian (contingency tab)", code = { # without NAs set.seed(123) df1 <- contingency_table( type = "bayes", data = mtcars, x = am, y = cyl ) expect_snapshot(df1[["expression"]]) # with NAs set.seed(123) df2 <- contingency_table( type = "bayes", data = msleep, x = vore, y = conservation ) expect_snapshot(df2[["expression"]]) } )