English

Bayesian Compressed Regression

Machine Learning 2013-03-26 v2 Machine Learning

Abstract

As an alternative to variable selection or shrinkage in high dimensional regression, we propose to randomly compress the predictors prior to analysis. This dramatically reduces storage and computational bottlenecks, performing well when the predictors can be projected to a low dimensional linear subspace with minimal loss of information about the response. As opposed to existing Bayesian dimensionality reduction approaches, the exact posterior distribution conditional on the compressed data is available analytically, speeding up computation by many orders of magnitude while also bypassing robustness issues due to convergence and mixing problems with MCMC. Model averaging is used to reduce sensitivity to the random projection matrix, while accommodating uncertainty in the subspace dimension. Strong theoretical support is provided for the approach by showing near parametric convergence rates for the predictive density in the large p small n asymptotic paradigm. Practical performance relative to competitors is illustrated in simulations and real data applications.

Keywords

Cite

@article{arxiv.1303.0642,
  title  = {Bayesian Compressed Regression},
  author = {Rajarshi Guhaniyogi and David B. Dunson},
  journal= {arXiv preprint arXiv:1303.0642},
  year   = {2013}
}

Comments

29 pages, 4 figures

R2 v1 2026-06-21T23:36:01.742Z