BAS: Bayesian Model Averaging using Bayesian Adaptive Sampling
Publication
, Software
Clyde, MA
2016
Package for Bayesian Model Averaging in linear models using stochastic or deterministic sampling without replacement from posterior distributions. Prior distributions on coefficients are from Zellner's g-prior or mixtures of g-priors corresponding to the Zellner-Siow Cauchy Priors or the Liang et al hyper-g priors (JASA 2008). Other model selection criterian include AIC and BIC. Sampling probabilities may be updated based on the sampled models. Allows uniform or beta-binomial prior distributions on models.
Duke Scholars
Citation
APA
Chicago
ICMJE
MLA
NLM
Clyde, M. A. (2016). BAS: Bayesian Model Averaging using Bayesian Adaptive Sampling. CRAN. https://doi.org/10.5281/zenodo.59497
Clyde, M. A. “BAS: Bayesian Model Averaging using Bayesian Adaptive Sampling.” CRAN, 2016. https://doi.org/10.5281/zenodo.59497.
Clyde MA. BAS: Bayesian Model Averaging using Bayesian Adaptive Sampling. CRAN; 2016.
Clyde, M. A. BAS: Bayesian Model Averaging using Bayesian Adaptive Sampling. CRAN, 2016. Manual, doi:10.5281/zenodo.59497.
Clyde MA. BAS: Bayesian Model Averaging using Bayesian Adaptive Sampling. CRAN; 2016.