SOTAVerified

Robust Bayesian Classification Using an Optimistic Score Ratio

2020-07-08ICML 2020Code Available0· sign in to hype

Viet Anh Nguyen, Nian Si, Jose Blanchet

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

We build a Bayesian contextual classification model using an optimistic score ratio for robust binary classification when there is limited information on the class-conditional, or contextual, distribution. The optimistic score searches for the distribution that is most plausible to explain the observed outcomes in the testing sample among all distributions belonging to the contextual ambiguity set which is prescribed using a limited structural constraint on the mean vector and the covariance matrix of the underlying contextual distribution. We show that the Bayesian classifier using the optimistic score ratio is conceptually attractive, delivers solid statistical guarantees and is computationally tractable. We showcase the power of the proposed optimistic score ratio classifier on both synthetic and empirical data.

Tasks

Reproductions