| 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 |