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Asymptotic Consistency of Loss-Calibrated Variational Bayes

Authors :
Jaiswal, Prateek
Honnappa, Harsha
Rao, Vinayak A.
Publication Year :
2019

Abstract

This paper establishes the asymptotic consistency of the {\it loss-calibrated variational Bayes} (LCVB) method. LCVB was proposed in~\cite{LaSiGh2011} as a method for approximately computing Bayesian posteriors in a `loss aware' manner. This methodology is also highly relevant in general data-driven decision-making contexts. Here, we not only establish the asymptotic consistency of the calibrated approximate posterior, but also the asymptotic consistency of decision rules. We also establish the asymptotic consistency of decision rules obtained from a `naive' variational Bayesian procedure.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1911.01288
Document Type :
Working Paper