The Bayesian Lasso

The Lasso estimate for linear regression parameters can be interpreted as a Bayesian posterior mode estimate when the regression parameters have independent Laplace (i.e., double-exponential) priors. Gibbs sampling from this posterior is possible using an expanded hierarchy with conjugate normal pri...

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Vydáno v:Journal of the American Statistical Association Ročník 103; číslo 482; s. 681 - 686
Hlavní autoři: Park, Trevor, Casella, George
Médium: Journal Article
Jazyk:angličtina
Vydáno: Alexandria, VA Taylor & Francis 01.06.2008
American Statistical Association
Taylor & Francis Ltd
Témata:
ISSN:0162-1459, 1537-274X
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Shrnutí:The Lasso estimate for linear regression parameters can be interpreted as a Bayesian posterior mode estimate when the regression parameters have independent Laplace (i.e., double-exponential) priors. Gibbs sampling from this posterior is possible using an expanded hierarchy with conjugate normal priors for the regression parameters and independent exponential priors on their variances. A connection with the inverse-Gaussian distribution provides tractable full conditional distributions. The Bayesian Lasso provides interval estimates (Bayesian credible intervals) that can guide variable selection. Moreover, the structure of the hierarchical model provides both Bayesian and likelihood methods for selecting the Lasso parameter. Slight modifications lead to Bayesian versions of other Lasso-related estimation methods, including bridge regression and a robust variant.
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ISSN:0162-1459
1537-274X
DOI:10.1198/016214508000000337