Spike and slab variable selection: Frequentist and Bayesian strategies
Cleveland Clinic · Case Western Reserve University
Abstract
Variable selection in the linear regression model takes many apparent faces from both frequentist and Bayesian standpoints. In this paper we introduce a variable selection method referred to as a rescaled spike and slab model. We study the importance of prior hierarchical specifications and draw connections to frequentist generalized ridge regression estimation. Specifically, we study the usefulness of continuous bimodal priors to model hypervariance parameters, and the effect scaling has on the posterior mean through its relationship to penalization. Several model selection strategies, some frequentist and some Bayesian in nature, are developed and studied theoretically. We demonstrate the importance of…
Citation impact
- FWCI
- 7.14
- Percentile
- 100%
- References
- 36
Authors
2Topics & keywords
- Frequentist inference
- Prior probability
- Mathematics
- Model selection
- Bayesian probability
- Spike (software development)
- Feature selection
- Bayesian linear regression
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