Robustifying likelihoods by optimistically re-weighting data Journal Article


Authors: Dewaskar, M.; Tosh, C.; Knoblauch, J.; Dunson, D. B.
Article Title: Robustifying likelihoods by optimistically re-weighting data
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. Supplementary materials for this article are available online, including a standardized description of the materials available for reproducing the work. © 2025 American Statistical Association.
Keywords: mixture models; model misspecification; coarsened bayes; data contamination; outliers; robust inference; total variation distance
Journal Title: Journal of the American Statistical Association
ISSN: 0162-1459
Publisher: American Statistical Association  
Publication status: Online ahead of print
Date Published: 2025-04-11
Online Publication Date: 2025-04-11
Language: English
DOI: 10.1080/01621459.2025.2468012
PROVIDER: scopus
DOI/URL:
Notes: Article -- Source: Scopus
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  1. Christopher John Tosh
    5 Tosh