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Adaptive MCMC for Bayesian Variable Selection in Generalised Linear Models and Survival Models
by
Griffin, Jim
, Livingstone, Samuel
, Liang, Xitong
in
Adaptation
/ adaptive Markov Chain Monte Carlo
/ Algorithms
/ Analysis
/ Approximation
/ Bayesian analysis
/ Bayesian computation
/ Bayesian variable selection
/ Cancer
/ Data augmentation
/ Design
/ Estimation
/ Feature selection
/ generalised linear models
/ Markov analysis
/ Markov chains
/ Markov processes
/ Mathematical models
/ Monte Carlo method
/ Neighborhoods
/ Parameters
/ Proposals
/ Regression analysis
/ spike-and-slab priors
/ Survival
/ Survival analysis
/ survival models
/ Variables
2023
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Adaptive MCMC for Bayesian Variable Selection in Generalised Linear Models and Survival Models
by
Griffin, Jim
, Livingstone, Samuel
, Liang, Xitong
in
Adaptation
/ adaptive Markov Chain Monte Carlo
/ Algorithms
/ Analysis
/ Approximation
/ Bayesian analysis
/ Bayesian computation
/ Bayesian variable selection
/ Cancer
/ Data augmentation
/ Design
/ Estimation
/ Feature selection
/ generalised linear models
/ Markov analysis
/ Markov chains
/ Markov processes
/ Mathematical models
/ Monte Carlo method
/ Neighborhoods
/ Parameters
/ Proposals
/ Regression analysis
/ spike-and-slab priors
/ Survival
/ Survival analysis
/ survival models
/ Variables
2023
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Do you wish to request the book?
Adaptive MCMC for Bayesian Variable Selection in Generalised Linear Models and Survival Models
by
Griffin, Jim
, Livingstone, Samuel
, Liang, Xitong
in
Adaptation
/ adaptive Markov Chain Monte Carlo
/ Algorithms
/ Analysis
/ Approximation
/ Bayesian analysis
/ Bayesian computation
/ Bayesian variable selection
/ Cancer
/ Data augmentation
/ Design
/ Estimation
/ Feature selection
/ generalised linear models
/ Markov analysis
/ Markov chains
/ Markov processes
/ Mathematical models
/ Monte Carlo method
/ Neighborhoods
/ Parameters
/ Proposals
/ Regression analysis
/ spike-and-slab priors
/ Survival
/ Survival analysis
/ survival models
/ Variables
2023
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Adaptive MCMC for Bayesian Variable Selection in Generalised Linear Models and Survival Models
Journal Article
Adaptive MCMC for Bayesian Variable Selection in Generalised Linear Models and Survival Models
2023
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Overview
Developing an efficient computational scheme for high-dimensional Bayesian variable selection in generalised linear models and survival models has always been a challenging problem due to the absence of closed-form solutions to the marginal likelihood. The Reversible Jump Markov Chain Monte Carlo (RJMCMC) approach can be employed to jointly sample models and coefficients, but the effective design of the trans-dimensional jumps of RJMCMC can be challenging, making it hard to implement. Alternatively, the marginal likelihood can be derived conditional on latent variables using a data-augmentation scheme (e.g., Pólya-gamma data augmentation for logistic regression) or using other estimation methods. However, suitable data-augmentation schemes are not available for every generalised linear model and survival model, and estimating the marginal likelihood using a Laplace approximation or a correlated pseudo-marginal method can be computationally expensive. In this paper, three main contributions are presented. Firstly, we present an extended Point-wise implementation of Adaptive Random Neighbourhood Informed proposal (PARNI) to efficiently sample models directly from the marginal posterior distributions of generalised linear models and survival models. Secondly, in light of the recently proposed approximate Laplace approximation, we describe an efficient and accurate estimation method for marginal likelihood that involves adaptive parameters. Additionally, we describe a new method to adapt the algorithmic tuning parameters of the PARNI proposal by replacing Rao-Blackwellised estimates with the combination of a warm-start estimate and the ergodic average. We present numerous numerical results from simulated data and eight high-dimensional genetic mapping data-sets to showcase the efficiency of the novel PARNI proposal compared with the baseline add–delete–swap proposal.
Publisher
MDPI AG,MDPI
Subject
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