Title
On the Exponentially Weighted Aggregate with the Laplace Prior.
Abstract
In this paper, we study the statistical behaviour of the Exponentially Weighted Aggregate (EWA) in the problem of high-dimensional regression with fixed design. Under the assumption that the underlying regression vector is sparse, it is reasonable to use the Laplace distribution as a prior. The resulting estimator and, specifically, a particular instance of it referred to as the Bayesian lasso, was already used in the statistical literature because of its computational convenience, even though no thorough mathematical analysis of its statistical properties was carried out. The present work fills this gap by establishing sharp oracle inequalities for the EWA with the Laplace prior. These inequalities show that if the temperature parameter is small, the EWA with the Laplace prior satisfies the same type of oracle inequality as the lasso estimator does, as long as the quality of estimation is measured by the prediction loss. Extensions of the proposed methodology to the problem of prediction with low-rank matrices are considered.
Year
DOI
Venue
2016
10.1214/17-AOS1626
ANNALS OF STATISTICS
Keywords
Field
DocType
Sparsity,Bayesian lasso,oracle inequality,exponential weights,high-dimensional regression,trace regression,low-rank matrices
Econometrics,Oracle inequality,Laplace transform,High dimensional regression,Statistics,Mathematics,Exponential growth
Journal
Volume
Issue
ISSN
46
5
0090-5364
Citations 
PageRank 
References 
0
0.34
0
Authors
3
Name
Order
Citations
PageRank
Arnak S. Dalalyan112014.65
Edwin Grappin200.34
Quentin Paris311.48