Generalized double Pareto shrinkage
Armagan, Artin, Dunson, David, Lee, Jaeyong
We propose a generalized double Pareto prior for Bayesian shrinkage estimation and inferences in linear models. The prior can be obtained via a scale mixture of Laplace or normal distributions, forming a bridge between the Laplace and Normal-Jeffreys' priors. While it has a spike at zero like the Laplace density, it also has a Student's $t$-like tail behavior. Bayesian computation is straightforward via a simple Gibbs sampling algorithm. We investigate the properties of the maximum a posteriori estimator, as sparse estimation plays an important role in many problems, reveal connections with some well-established regularization procedures, and show some asymptotic results. The performance of the prior is tested through simulations and an application.
Jan-26-2013
- Country:
- North America > United States > California (0.28)
- Genre:
- Research Report (0.64)
- Industry:
- Health & Medicine (0.68)