资源论文Adversarial Regression with Multiple Learners

Adversarial Regression with Multiple Learners

2020-03-16 | |  62 |   31 |   0

Abstract

Despite the considerable success enjoyed by machine learning techniques in practice, numerous studies demonstrated that many approaches are vulnerable to attacks. An important class of such attacks involves adversaries changing features at test time to cause incorrect predictions. Previous investigations of this problem pit a single learne against an adversary. However, in many situations an adversary’s decision is aimed at a collection o learners, rather than specifically targeted at eac independently. We study the problem of adversarial linear regression with multiple learners. We approximate the resulting game by exhibiting an upper bound on learner loss functions, and show that the resulting game has a unique symmetric equilibrium. We present an algorithm for computing this equilibrium, and show through extensive experiments that equilibrium models are significantly more robust than conventional regularized linear regression.

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