BayesS5 - Bayesian Variable Selection Using Simplified Shotgun Stochastic
Search with Screening (S5)
In p >> n settings, full posterior sampling using existing
Markov chain Monte Carlo (MCMC) algorithms is highly
inefficient and often not feasible from a practical
perspective. To overcome this problem, we propose a scalable
stochastic search algorithm that is called the Simplified
Shotgun Stochastic Search (S5) and aimed at rapidly explore
interesting regions of model space and finding the maximum a
posteriori(MAP) model. Also, the S5 provides an approximation
of posterior probability of each model (including the marginal
inclusion probabilities). This algorithm is a part of an
article titled "Scalable Bayesian Variable Selection Using
Nonlocal Prior Densities in Ultrahigh-dimensional Settings"
(2018) by Minsuk Shin, Anirban Bhattacharya, and Valen E.
Johnson and "Nonlocal Functional Priors for Nonparametric
Hypothesis Testing and High-dimensional Model Selection"
(2020+) by Minsuk Shin and Anirban Bhattacharya.