SOTAVerified

On Robust Trimming of Bayesian Network Classifiers

2018-05-29Code Available0· sign in to hype

YooJung Choi, Guy Van Den Broeck

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

This paper considers the problem of removing costly features from a Bayesian network classifier. We want the classifier to be robust to these changes, and maintain its classification behavior. To this end, we propose a closeness metric between Bayesian classifiers, called the expected classification agreement (ECA). Our corresponding trimming algorithm finds an optimal subset of features and a new classification threshold that maximize the expected agreement, subject to a budgetary constraint. It utilizes new theoretical insights to perform branch-and-bound search in the space of feature sets, while computing bounds on the ECA. Our experiments investigate both the runtime cost of trimming and its effect on the robustness and accuracy of the final classifier.

Tasks

Reproductions