| bbPrior | Priors on model space for variable selection problems | 
| bestAIC | Model with best AIC, BIC, EBIC or other general information criteria (getIC) | 
| bestBIC | Model with best AIC, BIC, EBIC or other general information criteria (getIC) | 
| bestEBIC | Model with best AIC, BIC, EBIC or other general information criteria (getIC) | 
| bestIC | Model with best AIC, BIC, EBIC or other general information criteria (getIC) | 
| bfnormmix | Number of Normal mixture components under Normal-IW and Non-local priors | 
| bic | Class "msPriorSpec" | 
| bicprior | Class "msPriorSpec" | 
| binomPrior | Priors on model space for variable selection problems | 
| dalapl | Density and random draws from the asymmetric Laplace distribution | 
| ddir | Dirichlet density | 
| demom | Non-local prior density, cdf and quantile functions. | 
| demom-method | Non-local prior density, cdf and quantile functions. | 
| demom-methods | Non-local prior density, cdf and quantile functions. | 
| demomigmarg | Non-local prior density, cdf and quantile functions. | 
| dimom | Non-local prior density, cdf and quantile functions. | 
| diwish | Density for Inverse Wishart distribution | 
| dmom | Non-local prior density, cdf and quantile functions. | 
| dmomigmarg | Non-local prior density, cdf and quantile functions. | 
| dpostNIW | Posterior Normal-IWishart density | 
| getAIC | Obtain AIC, BIC, EBIC or other general information criteria (getIC) | 
| getAIC-method | Obtain AIC, BIC, EBIC or other general information criteria (getIC) | 
| getAIC-methods | Obtain AIC, BIC, EBIC or other general information criteria (getIC) | 
| getBIC | Obtain AIC, BIC, EBIC or other general information criteria (getIC) | 
| getBIC-method | Obtain AIC, BIC, EBIC or other general information criteria (getIC) | 
| getBIC-methods | Obtain AIC, BIC, EBIC or other general information criteria (getIC) | 
| getEBIC | Obtain AIC, BIC, EBIC or other general information criteria (getIC) | 
| getEBIC-method | Obtain AIC, BIC, EBIC or other general information criteria (getIC) | 
| getEBIC-methods | Obtain AIC, BIC, EBIC or other general information criteria (getIC) | 
| getIC | Obtain AIC, BIC, EBIC or other general information criteria (getIC) | 
| getIC-method | Obtain AIC, BIC, EBIC or other general information criteria (getIC) | 
| getIC-methods | Obtain AIC, BIC, EBIC or other general information criteria (getIC) | 
| groupemomprior | Class "msPriorSpec" | 
| groupimomprior | Class "msPriorSpec" | 
| groupmomprior | Class "msPriorSpec" | 
| groupzellnerprior | Class "msPriorSpec" | 
| palapl | Density and random draws from the asymmetric Laplace distribution | 
| pemom | Non-local prior density, cdf and quantile functions. | 
| pemomigmarg | Non-local prior density, cdf and quantile functions. | 
| pimom | Non-local prior density, cdf and quantile functions. | 
| pimomMarginalK | Marginal density of the observed data for linear regression with Normal, two-piece Normal, Laplace or two-piece Laplace residuals under non-local and Zellner priors | 
| pimomMarginalU | Marginal density of the observed data for linear regression with Normal, two-piece Normal, Laplace or two-piece Laplace residuals under non-local and Zellner priors | 
| plotprior | Plot estimated marginal prior inclusion probabilities | 
| plotprior-method | Plot estimated marginal prior inclusion probabilities | 
| plotprior-methods | Plot estimated marginal prior inclusion probabilities | 
| pmom | Non-local prior density, cdf and quantile functions. | 
| pmomigmarg | Non-local prior density, cdf and quantile functions. | 
| pmomMarginalK | Marginal density of the observed data for linear regression with Normal, two-piece Normal, Laplace or two-piece Laplace residuals under non-local and Zellner priors | 
| pmomMarginalU | Marginal density of the observed data for linear regression with Normal, two-piece Normal, Laplace or two-piece Laplace residuals under non-local and Zellner priors | 
| postModeBlockDiag | Bayesian model selection and averaging under block-diagonal X'X for linear models. | 
| postModeOrtho | Bayesian model selection and averaging under block-diagonal X'X for linear models. | 
| postProb | Obtain posterior model probabilities | 
| postProb-method | Obtain posterior model probabilities | 
| postProb-methods | Obtain posterior model probabilities | 
| postSamples | Extract posterior samples from an object | 
| postSamples-method | Extract posterior samples from an object | 
| postSamples-methods | Extract posterior samples from an object | 
| priorp2g | Moment and inverse moment prior elicitation |