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Robustifying likelihoods by optimistically re-weighting data

Authors :
Dewaskar, Miheer
Tosh, Christopher
Knoblauch, Jeremias
Dunson, David B.
Publication Year :
2023

Abstract

Likelihood-based inferences have been remarkably successful in wide-spanning application areas. However, even after due diligence in selecting a good model for the data at hand, there is inevitably some amount of model misspecification: outliers, data contamination or inappropriate parametric assumptions such as Gaussianity mean that most models are at best rough approximations of reality. A significant practical concern is that for certain inferences, even small amounts of model misspecification may have a substantial impact; a problem we refer to as brittleness. This article attempts to address the brittleness problem in likelihood-based inferences by choosing the most model friendly data generating process in a distance-based neighborhood of the empirical measure. This leads to a new Optimistically Weighted Likelihood (OWL), which robustifies the original likelihood by formally accounting for a small amount of model misspecification. Focusing on total variation (TV) neighborhoods, we study theoretical properties, develop estimation algorithms and illustrate the methodology in applications to mixture models and regression.<br />Comment: Python code available at https://github.com/cjtosh/owl

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2303.10525
Document Type :
Working Paper