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RcppExports.R
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27 lines (20 loc) · 3.53 KB
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# Generated by using Rcpp::compileAttributes() -> do not edit by hand
# Generator token: 10BE3573-1514-4C36-9D1C-5A225CD40393
run_bgmCompare_parallel <- function(observations, num_groups, counts_per_category, blume_capel_stats, pairwise_stats, num_categories, main_alpha, main_beta, pairwise_scale, difference_scale, difference_selection_alpha, difference_selection_beta, difference_prior, iter, warmup, na_impute, missing_data_indices, is_ordinal_variable, baseline_category, difference_selection, main_effect_indices, pairwise_effect_indices, target_accept, nuts_max_depth, learn_mass_matrix, projection, group_membership, group_indices, interaction_index_matrix, inclusion_probability, num_chains, nThreads, seed, update_method, hmc_num_leapfrogs, progress_type) {
.Call(`_bgms_run_bgmCompare_parallel`, observations, num_groups, counts_per_category, blume_capel_stats, pairwise_stats, num_categories, main_alpha, main_beta, pairwise_scale, difference_scale, difference_selection_alpha, difference_selection_beta, difference_prior, iter, warmup, na_impute, missing_data_indices, is_ordinal_variable, baseline_category, difference_selection, main_effect_indices, pairwise_effect_indices, target_accept, nuts_max_depth, learn_mass_matrix, projection, group_membership, group_indices, interaction_index_matrix, inclusion_probability, num_chains, nThreads, seed, update_method, hmc_num_leapfrogs, progress_type)
}
run_bgm_parallel <- function(observations, num_categories, pairwise_scale, edge_prior, inclusion_probability, beta_bernoulli_alpha, beta_bernoulli_beta, beta_bernoulli_alpha_between, beta_bernoulli_beta_between, dirichlet_alpha, lambda, interaction_index_matrix, iter, warmup, counts_per_category, blume_capel_stats, main_alpha, main_beta, na_impute, missing_index, is_ordinal_variable, baseline_category, edge_selection, update_method, pairwise_effect_indices, target_accept, pairwise_stats, hmc_num_leapfrogs, nuts_max_depth, learn_mass_matrix, num_chains, nThreads, seed, progress_type) {
.Call(`_bgms_run_bgm_parallel`, observations, num_categories, pairwise_scale, edge_prior, inclusion_probability, beta_bernoulli_alpha, beta_bernoulli_beta, beta_bernoulli_alpha_between, beta_bernoulli_beta_between, dirichlet_alpha, lambda, interaction_index_matrix, iter, warmup, counts_per_category, blume_capel_stats, main_alpha, main_beta, na_impute, missing_index, is_ordinal_variable, baseline_category, edge_selection, update_method, pairwise_effect_indices, target_accept, pairwise_stats, hmc_num_leapfrogs, nuts_max_depth, learn_mass_matrix, num_chains, nThreads, seed, progress_type)
}
sample_omrf_gibbs <- function(no_states, no_variables, no_categories, interactions, thresholds, iter) {
.Call(`_bgms_sample_omrf_gibbs`, no_states, no_variables, no_categories, interactions, thresholds, iter)
}
sample_bcomrf_gibbs <- function(no_states, no_variables, no_categories, interactions, thresholds, variable_type, baseline_category, iter) {
.Call(`_bgms_sample_bcomrf_gibbs`, no_states, no_variables, no_categories, interactions, thresholds, variable_type, baseline_category, iter)
}
sample_ggm <- function(inputFromR, prior_inclusion_prob, initial_edge_indicators, no_iter, no_warmup, no_chains, edge_selection, seed, no_threads, progress_type) {
.Call(`_bgms_sample_ggm`, inputFromR, prior_inclusion_prob, initial_edge_indicators, no_iter, no_warmup, no_chains, edge_selection, seed, no_threads, progress_type)
}
compute_Vn_mfm_sbm <- function(no_variables, dirichlet_alpha, t_max, lambda) {
.Call(`_bgms_compute_Vn_mfm_sbm`, no_variables, dirichlet_alpha, t_max, lambda)
}