| do.call.emjmcmc | A help function used by parall.gmj to run parallel chains of (R)(G)MJMCMC algorithms |
| erf | erf activation function |
| estimate.bas.glm | Obtaining Bayesian estimators of interest from a GLM model |
| estimate.bas.lm | Obtaining Bayesian estimators of interest from a LM model |
| estimate.bigm | Obtaining Bayesian estimators of interest from a GLM model |
| estimate.elnet | A test function to work with elastic networks in future, be omitted so far |
| estimate.gamma.cpen | Estimate marginal log posterior of a single BGNLM model |
| estimate.gamma.cpen_2 | Estimate marginal log posterior of a single BGNLM model with alternative defaults |
| estimate.glm | Obtaining Bayesian estimators of interest from a GLM model |
| estimate.logic.glm | Obtaining Bayesian estimators of interest from a GLM model in a logic regression context |
| estimate.logic.lm | Obtaining Bayesian estimators of interest from an LM model for the logic regression case |
| estimate.speedglm | Obtaining Bayesian estimators of interest from a GLM model |
| LogicRegr | A wrapper for running the Bayesian logic regression based inference in a easy to use way |
| m | Product function used in the deep regression context |
| parall.gmj | A function to run parallel chains of (R)(G)MJMCMC algorithms |
| parallelize | An example of user defined parallelization (cluster based) function for within an MJMCMC chain calculations (mclapply or lapply are used by default depending on specification and OS). |
| pinferunemjmcmc | A wrapper for running the GLMM, BLR, or DBRM based inference and predictions in an expert but rather easy to use way |
| runemjmcmc | Mode jumping MJMCMC or Genetically Modified Mode jumping MCMC or Reversible Genetically Modified Mode jumping MCMC for variable selection, Bayesian model averaging and feature engineering |
| sigmoid | sigmoid activation function |
| simplify.formula | A function parsing the formula into the vectors of character arrays of responses and covariates |
| simplifyposteriors | A function that ads up posteriors for the same expression written in different character form in different parallel runs of the algorithm (mainly for Logic Regression and Deep Regression contexts) |
| truncfactorial | Truncated factorial to avoid stack overflow for huge values |