## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>" ) ## ----------------------------------------------------------------------------- library(bpgmm) set.seed(2029) X <- cbind( matrix(rnorm(10, mean = -2.0, sd = 0.25), nrow = 2), matrix(rnorm(10, mean = 0.0, sd = 0.25), nrow = 2), matrix(rnorm(10, mean = 2.0, sd = 0.25), nrow = 2) ) known_labels <- rep(1:3, each = 5) ## ----fig.width = 5.5, fig.height = 4, fig.alt = "Scatter plot of a compact three-cluster diagnostic data set."---- cluster_cols <- c("#0072B2", "#D55E00", "#009E73", "#CC79A7") plot( X[1, ], X[2, ], col = cluster_cols[known_labels], pch = 19, xlab = "Variable 1", ylab = "Variable 2", main = "Diagnostic example", asp = 1 ) ## ----------------------------------------------------------------------------- fits <- pgmm_rjmcmc_chains( X = X, m_init = 3, m_range = c(1, 4), q_new = 1, burn = 1, niter = 4, constraint = "UUU", m_step = 1, v_step = 1, chains = 2, cores = 1, seed = 2029, verbose = FALSE ) length(fits) attr(fits, "chain_seeds") ## ----------------------------------------------------------------------------- chain_summaries <- lapply(fits, summarize_pgmm_rjmcmc, true_cluster = known_labels) data.frame( chain = names(chain_summaries), ari = vapply(chain_summaries, function(x) x$ari, numeric(1)), modal_clusters = vapply(chain_summaries, function(x) { as.integer(names(which.max(x$n_clusters))) }, integer(1)) ) ## ----------------------------------------------------------------------------- cluster_count_trace <- function(fit) { vapply(fit$active_cluster_samples, sum, numeric(1)) } constraint_trace <- function(fit) { vapply(fit$constraint_samples, constraint_to_model, character(1)) } cluster_traces <- lapply(fits, cluster_count_trace) constraint_traces <- lapply(fits, constraint_trace) cluster_traces constraint_traces ## ----fig.width = 7, fig.height = 4, fig.alt = "Trace plot of sampled cluster counts across two short chains."---- old_par <- par(mar = c(4, 4, 3, 1)) plot( cluster_traces[[1]], type = "b", pch = 19, ylim = range(unlist(cluster_traces)), col = "#0072B2", xlab = "Saved iteration", ylab = "Active clusters", main = "Cluster-count trace" ) lines(cluster_traces[[2]], type = "b", pch = 19, col = "#D55E00") legend("topright", legend = names(fits), col = c("#0072B2", "#D55E00"), lty = 1, pch = 19, bty = "n") par(old_par) ## ----------------------------------------------------------------------------- co_clustering_matrix <- function(fit) { n <- length(fit$allocation_samples[[1]]) out <- matrix(0, n, n) for (allocation in fit$allocation_samples) { out <- out + outer(allocation, allocation, "==") } out / length(fit$allocation_samples) } co_mat <- co_clustering_matrix(fits[[1]]) round(co_mat[1:6, 1:6], 2) ## ----fig.width = 5.5, fig.height = 5, fig.alt = "Heatmap of posterior co-clustering probabilities."---- image( seq_len(nrow(co_mat)), seq_len(ncol(co_mat)), co_mat[nrow(co_mat):1, ], col = hcl.colors(20, "YlGnBu", rev = TRUE), xlab = "Observation", ylab = "Observation", main = "Posterior co-clustering" )