期刊
BIOMETRIKA
卷 96, 期 4, 页码 835-845出版社
OXFORD UNIV PRESS
DOI: 10.1093/biomet/asp047
关键词
Double-exponential distribution; Gibbs sampler; L(1) penalty; Laplace distribution; Markov chain Monte Carlo; Posterior predictive distribution; Regularization
The lasso estimate for linear regression corresponds to a posterior mode when independent, double-exponential prior distributions are placed on the regression coefficients. This paper introduces new aspects of the broader Bayesian treatment of lasso regression. A direct characterization of the regression coefficients' posterior distribution is provided, and computation and inference under this characterization is shown to be straightforward. Emphasis is placed on point estimation using the posterior mean, which facilitates prediction of future observations via the posterior predictive distribution. It is shown that the standard lasso prediction method does not necessarily agree with model-based, Bayesian predictions. A new Gibbs sampler for Bayesian lasso regression is introduced.
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