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arxiv: 1706.00098 · v2 · pith:ACIK2KXMnew · submitted 2017-05-31 · 📊 stat.ML · stat.CO

Bayesian l₀-regularized Least Squares

classification 📊 stat.ML stat.CO
keywords bayesianposteriorspike-and-slabcomputationalleastpriorsprovidesregularization
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Bayesian $l_0$-regularized least squares is a variable selection technique for high dimensional predictors. The challenge is optimizing a non-convex objective function via search over model space consisting of all possible predictor combinations. Spike-and-slab (a.k.a. Bernoulli-Gaussian) priors are the gold standard for Bayesian variable selection, with a caveat of computational speed and scalability. Single Best Replacement (SBR) provides a fast scalable alternative. We provide a link between Bayesian regularization and proximal updating, which provides an equivalence between finding a posterior mode and a posterior mean with a different regularization prior. This allows us to use SBR to find the spike-and-slab estimator. To illustrate our methodology, we provide simulation evidence and a real data example on the statistical properties and computational efficiency of SBR versus direct posterior sampling using spike-and-slab priors. Finally, we conclude with directions for future research.

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