Handbook of Bayesian Variable Selection 2021
DOI: 10.1201/9781003089018-5
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Adaptive Computational Methods for Bayesian Variable Selection

Abstract: Modern regression applications can involve hundreds or thousands of variables which motivates the use of variable selection methods. Bayesian variable selection defines a posterior distribution on the possible subsets of the variables (which are usually termed models) to express uncertainty about which variables are strongly linked to the response. This can be used to provide Bayesian model averaged predictions or inference, and to understand the relative importance of different variables. However, there has b… Show more

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