| Literature DB >> 30287977 |
Richard D Payne1, Bani K Mallick1.
Abstract
This paper discusses the challenges presented by tall data problems associated with Bayesian classification (specifically binary classification) and the existing methods to handle them. Current methods include parallelizing the likelihood, subsampling, and consensus Monte Carlo. A new method based on the two-stage Metropolis-Hastings algorithm is also proposed. The purpose of this algorithm is to reduce the exact likelihood computational cost in the tall data situation. In the first stage, a new proposal is tested by the approximate likelihood based model. The full likelihood based posterior computation will be conducted only if the proposal passes the first stage screening. Furthermore, this method can be adopted into the consensus Monte Carlo framework. The two-stage method is applied to logistic regression, hierarchical logistic regression, and Bayesian multivariate adaptive regression splines.Entities:
Keywords: Bayesian inference; Bayesian multivariate adaptive regression splines; Logistic model; Markov chain monte carlo; Metropolis-hastings algorithm; Tall data
Year: 2018 PMID: 30287977 PMCID: PMC6166660 DOI: 10.1007/s00357-018-9248-z
Source DB: PubMed Journal: J Classif ISSN: 0176-4268 Impact factor: 1.673