test_that("uncategorized tests", { skip_on_cran() skip_if_not( fwildclusterboot:::find_proglang("julia"), message = "skip test as julia installation not found." ) # see this issue: https://github.com/s3alfisc/fwildclusterboot/issues/26 set.seed(76903) dqrng::dqset.seed(98796) data1 <<- fwildclusterboot:::create_data( N = 500, N_G1 = 6, icc1 = 0.01, N_G2 = 4, icc2 = 0.01, numb_fe1 = 10, numb_fe2 = 10, seed = 9865 ) feols1 <- fixest::feols( proposition_vote ~ treatment + ideology1 + log_income + group_id2, data = data1, weights = ~weights ) feols2 <- fixest::feols( proposition_vote ~ treatment + ideology1 + log_income + group_id2, data = data1, weights = data1$weights ) feols3 <- fixest::feols( proposition_vote ~ treatment + ideology1 + log_income + group_id2, data = data1, cluster = ~group_id1 ) feols4 <- fixest::feols( proposition_vote ~ treatment + ideology1 +log_income + group_id2, data = data1, cluster = data1$group_id1 ) boot1 <- boottest( feols1, param = "treatment", B = 999, clustid = "group_id1" ) boot2 <- boottest( feols2, param = "treatment", B = 999, clustid = "group_id1" ) boot3 <- boottest( feols3, param = "treatment", B = 999, clustid = "group_id1" ) boot4 <- boottest( feols4, param = "treatment", B = 999, clustid = "group_id1" ) expect_equal(generics::tidy(boot1), generics::tidy(boot2)) expect_equal(generics::tidy(boot3), generics::tidy(boot4)) # test invariance of boottest() results to type of fixed effect variable # (numeric vs factor vs character) # test issue https://github.com/s3alfisc/fwildclusterboot/issues/14 # raised by Timothée # Test 1: one cluster variable is numeric vs no cluster variable is numeric data(voters) to_char <- c("Q1_immigration", "Q2_defense", "group_id1") #sapply(voters[, to_char], class) voters_1 <<- voters voters_1$Q1_immigration <- as.numeric(voters_1$Q1_immigration) #sapply(voters_1[, to_char], class) feols_fit <- fixest::feols(proposition_vote ~ treatment + log_income | Q2_defense, data = voters) feols_fit_2 <- fixest::feols(proposition_vote ~ treatment + log_income | Q2_defense, data = voters_1) lfe_fit <- lfe::felm(proposition_vote ~ treatment + log_income | Q2_defense, data = voters) lfe_fit_2 <- lfe::felm(proposition_vote ~ treatment + log_income | Q2_defense, data = voters_1) boot1 <- suppressWarnings(boottest( feols_fit, clustid = c("Q1_immigration", "Q2_defense"), B = 9999, param = "treatment", bootcluster = "min" )) boot2 <- suppressWarnings(boottest( feols_fit_2, clustid = c("Q1_immigration", "Q2_defense"), B = 9999, param = "treatment", bootcluster = "min" )) boot3 <- suppressWarnings(boottest( feols_fit, clustid = c("Q1_immigration", "Q2_defense"), B = 9999, param = "treatment", bootcluster = "min" )) boot4 <- suppressWarnings(boottest( feols_fit, clustid = c("Q1_immigration", "Q2_defense"), B = 9999, param = "treatment", bootcluster = "min" )) expect_equal(boot1$t_stat, boot2$t_stat) expect_equal(boot2$t_stat, boot3$t_stat) expect_equal(boot3$t_stat, boot4$t_stat) expect_equal(boot4$t_stat, boot1$t_stat) # Test 2: one fixed effect is numeric vs no fixed effect is numeric data(voters) to_char <- c("Q1_immigration", "Q2_defense", "group_id1") #sapply(voters[, to_char], class) voters_1 <<- voters voters_1$Q2_defense <- as.numeric(voters_1$Q2_defense) #sapply(voters_1[, to_char], class) feols_fit <- fixest::feols(proposition_vote ~ treatment + log_income | Q2_defense, data = voters) feols_fit_2 <- fixest::feols(proposition_vote ~ treatment + log_income | Q2_defense, data = voters_1) lfe_fit <- lfe::felm(proposition_vote ~ treatment + log_income | Q2_defense, data = voters) lfe_fit_2 <- lfe::felm(proposition_vote ~ treatment + log_income | Q2_defense, data = voters_1) boot1 <- suppressWarnings( boottest( feols_fit, clustid = c("Q1_immigration"), B = 9999, param = "treatment", bootcluster = "min" ) ) boot2 <- suppressWarnings( boottest( feols_fit_2, clustid = c("Q1_immigration"), B = 9999, param = "treatment", bootcluster = "min" ) ) boot3 <- suppressWarnings( boottest( lfe_fit, clustid = c("Q1_immigration"), B = 9999, param = "treatment", bootcluster = "min" ) ) boot4 <- suppressWarnings( boottest( lfe_fit_2, clustid = c("Q1_immigration"), B = 9999, param = "treatment", bootcluster = "min" ) ) expect_equal(boot1$t_stat, boot2$t_stat) expect_equal(boot2$t_stat, boot3$t_stat) expect_equal(boot3$t_stat, boot4$t_stat) expect_equal(boot4$t_stat, boot1$t_stat) # Test 3: all fixed effects and cluster variables are numeric vs factors data(voters) to_char <- c("Q1_immigration", "Q2_defense", "group_id1") voters$group_id1 <- as.factor(voters$group_id1) #sapply(voters[, to_char], class) voters_1 <<- voters voters_1$Q1_immigration <- as.numeric(voters_1$Q1_immigration) voters_1$Q2_defense <- as.numeric(voters_1$Q2_defense) #sapply(voters_1[, to_char], class) feols_fit <- fixest::feols(proposition_vote ~ treatment + log_income | Q2_defense, data = voters) feols_fit_2 <- fixest::feols(proposition_vote ~ treatment + log_income | Q2_defense, data = voters_1) lfe_fit <- lfe::felm(proposition_vote ~ treatment + log_income | Q2_defense, data = voters) lfe_fit_2 <- lfe::felm(proposition_vote ~ treatment + log_income | Q2_defense, data = voters_1) boot1 <- suppressWarnings(boottest( feols_fit, clustid = c("Q1_immigration"), B = 9999, param = "treatment", bootcluster = "min" )) boot2 <- suppressWarnings(boottest( feols_fit_2, clustid = c("Q1_immigration"), B = 9999, param = "treatment", bootcluster = "min" )) boot3 <- suppressWarnings(boottest( lfe_fit, clustid = c("Q1_immigration"), B = 9999, param = "treatment", bootcluster = "min" )) boot4 <- suppressWarnings(boottest( lfe_fit_2, clustid = c("Q1_immigration"), B = 9999, param = "treatment", bootcluster = "min" )) expect_equal(boot1$t_stat, boot2$t_stat) expect_equal(boot2$t_stat, boot3$t_stat) expect_equal(boot3$t_stat, boot4$t_stat) expect_equal(boot4$t_stat, boot1$t_stat) # Test 4: Test 3, but now with two fixed effects data(voters) to_char <- c("Q1_immigration", "Q2_defense", "group_id1") voters$group_id1 <- as.factor(voters$group_id1) #sapply(voters[, to_char], class) voters_1 <<- voters voters_1$Q1_immigration <- as.numeric(voters_1$Q1_immigration) voters_1$Q2_defense <- as.numeric(voters_1$Q2_defense) #sapply(voters[, to_char], class) #sapply(voters_1[, to_char], class) feols_fit <- fixest::feols(proposition_vote ~ treatment + log_income | Q1_immigration + Q2_defense, data = voters ) feols_fit_2 <- fixest::feols(proposition_vote ~ treatment + log_income | Q1_immigration + Q2_defense, data = voters_1 ) lfe_fit <- lfe::felm(proposition_vote ~ treatment + log_income | Q1_immigration + Q2_defense, data = voters ) lfe_fit_2 <- lfe::felm(proposition_vote ~ treatment + log_income | Q1_immigration + Q2_defense, data = voters_1 ) boot1 <- suppressWarnings(boottest( feols_fit, clustid = c("Q1_immigration"), B = 9999, param = "treatment", bootcluster = "min" )) boot2 <- suppressWarnings(boottest( feols_fit_2, clustid = c("Q1_immigration"), B = 9999, param = "treatment", bootcluster = "min" )) boot3 <- suppressWarnings(boottest( lfe_fit, clustid = c("Q1_immigration"), B = 9999, param = "treatment", bootcluster = "min" )) boot4 <- suppressWarnings(boottest( lfe_fit_2, clustid = c("Q1_immigration"), B = 9999, param = "treatment", bootcluster = "min" )) expect_equal(boot1$t_stat, boot2$t_stat) expect_equal(boot2$t_stat, boot3$t_stat) expect_equal(boot3$t_stat, boot4$t_stat) expect_equal(boot4$t_stat, boot1$t_stat) # What if a fixed effect is a character? data(voters) to_char <- c("Q1_immigration", "Q2_defense", "group_id1") #sapply(voters[, to_char], class) voters_1 <<- voters voters_1$Q1_immigration <- as.character(voters_1$Q1_immigration) voters_1$Q2_defense <- as.character(voters_1$Q2_defense) #sapply(voters_1[, to_char], class) feols_fit <- fixest::feols(proposition_vote ~ treatment + log_income | Q1_immigration + Q2_defense, data = voters ) feols_fit_2 <- fixest::feols( proposition_vote ~ treatment + log_income, fixef = c("Q1_immigration", "Q2_defense"), data = voters_1 ) lfe_fit <- lfe::felm(proposition_vote ~ treatment + log_income | Q1_immigration + Q2_defense, data = voters ) lfe_fit_2 <- lfe::felm(proposition_vote ~ treatment + log_income | Q1_immigration + Q2_defense, data = voters_1 ) boot1 <- suppressWarnings(boottest( feols_fit, clustid = c("Q1_immigration"), B = 9999, param = "treatment", bootcluster = "min" )) expect_error( # boot2 <- tmp <- suppressWarnings( boottest( feols_fit_2, clustid = c("Q1_immigration"), B = 9999, param = "treatment", bootcluster = "min" ) ) ) boot3 <- suppressWarnings(boottest( lfe_fit, clustid = c("Q1_immigration"), B = 9999, param = "treatment", bootcluster = "min" )) expect_error( # boot4 <- suppressWarnings( boottest( lfe_fit_2, clustid = c("Q1_immigration"), B = 9999, param = "treatment", bootcluster = "min" ) ) ) expect_equal(boot1$t_stat, boot3$t_stat) # expect_equal(boot2$t_stat, boot3$t_stat) # expect_equal(boot3$t_stat, boot4$t_stat) # expect_equal(boot4$t_stat, boot1$t_stat) # Test 4 with fe = ON in suppressWarnings(boottest() data(voters) to_char <- c("Q1_immigration", "Q2_defense", "group_id1") voters$group_id1 <- as.factor(voters$group_id1) #sapply(voters[, to_char], class) voters_1 <<- voters voters_1$Q1_immigration <- as.numeric(voters_1$Q1_immigration) voters_1$Q2_defense <- as.numeric(voters_1$Q2_defense) #sapply(voters_1[, to_char], class) feols_fit <- fixest::feols(proposition_vote ~ treatment + log_income | Q1_immigration + Q2_defense, data = voters ) feols_fit_2 <- fixest::feols(proposition_vote ~ treatment + log_income | Q1_immigration + Q2_defense, data = voters_1 ) lfe_fit <- lfe::felm(proposition_vote ~ treatment + log_income | Q1_immigration + Q2_defense, data = voters ) lfe_fit_2 <- lfe::felm(proposition_vote ~ treatment + log_income | Q1_immigration + Q2_defense, data = voters_1 ) boot1 <- suppressWarnings( boottest( feols_fit, clustid = c("Q1_immigration"), B = 9999, fe = "Q2_defense", param = "treatment", bootcluster = "min" ) ) boot2 <- suppressWarnings( boottest( feols_fit_2, clustid = c("Q1_immigration"), B = 9999, fe = "Q2_defense", param = "treatment", bootcluster = "min" ) ) boot3 <- suppressWarnings( boottest( lfe_fit, clustid = c("Q1_immigration"), B = 9999, fe = "Q2_defense", param = "treatment", bootcluster = "min" ) ) boot4 <- suppressWarnings( boottest( lfe_fit_2, clustid = c("Q1_immigration"), B = 9999, fe = "Q2_defense", param = "treatment", bootcluster = "min" ) ) expect_equal(boot1$t_stat, boot2$t_stat) expect_equal(boot2$t_stat, boot3$t_stat) expect_equal(boot3$t_stat, boot4$t_stat) expect_equal(boot4$t_stat, boot1$t_stat) # all NA cluster variables voters$group_id1 <- NA lm_fit <- lm(proposition_vote ~ treatment, data = voters) expect_error(boottest( lm_fit, B = 999, param = "treatment", clustid = "group_id1" )) }) test_that("test vec2mat", { set.seed(5123) N <- 100 x <- rnorm(N) cluster <- sample(letters[1:5], N, TRUE) g <- collapse::GRP(cluster, call = FALSE) mat1 <- fwildclusterboot:::vec2mat(x = x, group_id = g$group.id) mat2 <- aggregate( x = diag(x), by = list(g$group.id), FUN = "sum", simplify = TRUE ) mat2 <- t(as.matrix(mat2)) expect_equal(mat1, mat2[-1,], ignore_attr = TRUE) })