| BayesMultMeta | Interface for the BayesMultMeta class |
| bayes_inference | Summary statistics from a posterior distribution |
| duplication_matrix | Duplication matrix |
| MC_ranks | Computes the ranks within the pooled draws of Markov chains |
| plot.BayesMultMeta | Plot a BayesMultMeta object |
| sample_post_nor_jef_marg_mu | Metropolis-Hastings algorithm for the normal distribution and the Jeffreys prior, where \mathbf{mu} is generated from the marginal posterior. |
| sample_post_nor_jef_marg_Psi | Metropolis-Hastings algorithm for the normal distribution and the Jeffreys prior, where \mathbf{Psi} is generated from the marginal posterior. |
| sample_post_nor_ref_marg_mu | Metropolis-Hastings algorithm for the normal distribution and the Berger and Bernardo reference prior, where \mathbf{mu} is generated from the marginal posterior. |
| sample_post_nor_ref_marg_Psi | Metropolis-Hastings algorithm for the normal distribution and the Berger and Bernardo reference prior, where \mathbf{Psi} is generated from the marginal posterior. |
| sample_post_t_jef_marg_mu | Metropolis-Hastings algorithm for the t-distribution and the Jeffreys prior, where \mathbf{mu} is generated from the marginal posterior. |
| sample_post_t_jef_marg_Psi | Metropolis-Hastings algorithm for the t-distribution and the Jeffreys prior, where \mathbf{Psi} is generated from the marginal posterior. |
| sample_post_t_ref_marg_mu | Metropolis-Hastings algorithm for the t-distribution and Berger and Bernardo reference prior, where \mathbf{mu} is generated from the marginal posterior. |
| sample_post_t_ref_marg_Psi | Metropolis-Hastings algorithm for the t-distribution and Berger and Bernardo reference prior, where \mathbf{Psi} is generated from the marginal posterior. |
| split_rank_hatR | Computes the split-\hat{R} estimate based on the rank normalization |
| summary.BayesMultMeta | Summary statistics from the posterior of a BayesMultMeta class |