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Grouping Priors and the Bayesian Elastic Net

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arxiv 1001.4083 v1 pith:CZPALHZD submitted 2010-01-22 stat.ME

Grouping Priors and the Bayesian Elastic Net

classification stat.ME
keywords priorgaussianlaplacepriorsbayesiandistributionsperformanceregression
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In the literature surrounding Bayesian penalized regression, the two primary choices of prior distribution on the regression coefficients are zero-mean Gaussian and Laplace. While both have been compared numerically and theoretically, there remains little guidance on which to use in real-life situations. We propose two viable solutions to this problem in the form of prior distributions which combine and compromise between Laplace and Gaussian priors, respectively. Through cross-validation the prior which optimizes prediction performance is automatically selected. We then demonstrate the improved performance of these new prior distributions relative to Laplace and Gaussian priors in both a simulated and experimental environment.

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