Bayesian Approaches to Shrinkage and Sparse Estimation
Dimitris Korobilis, Kenichi Shimizu

TL;DR
This paper surveys Bayesian methods for shrinkage and sparse estimation, highlighting their application to high-dimensional econometric models and providing practical algorithms and software tools.
Contribution
It introduces Bayesian shrinkage and variable selection techniques, extending them from simple regression to complex econometric models with practical implementation guidance.
Findings
Bayesian priors can produce estimators comparable to penalized likelihood methods.
The paper demonstrates Bayesian approaches in various econometric models.
A MATLAB package facilitates replication of the methods discussed.
Abstract
In all areas of human knowledge, datasets are increasing in both size and complexity, creating the need for richer statistical models. This trend is also true for economic data, where high-dimensional and nonlinear/nonparametric inference is the norm in several fields of applied econometric work. The purpose of this paper is to introduce the reader to the world of Bayesian model determination, by surveying modern shrinkage and variable selection algorithms and methodologies. Bayesian inference is a natural probabilistic framework for quantifying uncertainty and learning about model parameters, and this feature is particularly important for inference in modern models of high dimensions and increased complexity. We begin with a linear regression setting in order to introduce various classes of priors that lead to shrinkage/sparse estimators of comparable value to popular penalized…
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Taxonomy
TopicsForecasting Techniques and Applications · Statistical Methods and Inference
MethodsLinear Regression
