## ----setup-------------------------------------------------------------------- library(ISCA) ## ----------------------------------------------------------------------------- data("sim_data") head(sim_data) ISCA_step1 <- ISCA_random_assignments(data=sim_data, filter=native, majority_group=1, minority_group=c(0), fuzzifier = 1.5, n_clusters=3, draws=5, cluster_vars= c("female", "age", "education", "income")) head(ISCA_step1) ## ----------------------------------------------------------------------------- tail(ISCA_step1, 6) ## ----------------------------------------------------------------------------- majority_only <- ISCA_step1[ISCA_step1["native"] == 1, ] result_ISCA_clustertable <- ISCA_clustertable(data = majority_only, cluster_vars = c("native", "female", "age", "education", "income"), draws = 5) head(result_ISCA_clustertable, 50) ## ----------------------------------------------------------------------------- ISCA_modeling_results <- ISCA_modeling(data= ISCA_step1, model_spec="religiosity ~ native + female + age + education + discrimination", draws = 5, n_clusters = 3, weights = NULL) estimates <- as.data.frame(ISCA_modeling_results[1]) head(estimates, 30) # OLS estimates per cluster across iterations rsquared <- as.data.frame(ISCA_modeling_results[2]) head(rsquared) # Corresponding Adjusted R Squared values per cluster across iterations ## ----------------------------------------------------------------------------- cluster_as_columns <- estimates %>% tidyr::pivot_longer(cols = c(mean_coefficients, mean_std.error, mean_p_value), names_to = "Statistics", values_to = "value") %>% tidyr::pivot_wider(names_from = cluster, values_from = value) print(cluster_as_columns)