Litcius/Paper detail

Adversarial Machine Learning: Bayesian Perspectives

David Rı́os Insua, Roi Naveiro, Víctor Gallego, Jason Poulos

2023Journal of the American Statistical Association20 citationsDOIOpen Access PDF

Abstract

Adversarial Machine Learning (AML) is emerging as a major field aimed at protecting Machine Learning (ML) systems against security threats: in certain scenarios there may be adversaries that actively manipulate input data to fool learning systems. This creates a new class of security vulnerabilities that ML systems may face, and a new desirable property called adversarial robustness essential to trust operations based on ML outputs. Most work in AML is built upon a game-theoretic modeling of the conflict between a learning system and an adversary, ready to manipulate input data. This assumes that each agent knows their opponent’s interests and uncertainty judgments, facilitating inferences based on Nash equilibria. However, such common knowledge assumption is not realistic in the security scenarios typical of AML. After reviewing such game-theoretic approaches, we discuss the benefits that Bayesian perspectives provide when defending ML-based systems. We demonstrate how the Bayesian approach allows us to explicitly model our uncertainty about the opponent’s beliefs and interests, relaxing unrealistic assumptions, and providing more robust inferences. We illustrate this approach in supervised learning settings, and identify relevant future research problems. Supplementary materials for this article are available online.

Topics & Concepts

Adversarial systemComputer scienceAdversarial machine learningAdversaryArtificial intelligenceRobustness (evolution)Machine learningNash equilibriumClass (philosophy)Game theoryBayesian probabilityField (mathematics)Computer securityMathematical optimizationMathematical economicsMathematicsChemistryPure mathematicsBiochemistryGeneAdversarial Robustness in Machine LearningAnomaly Detection Techniques and ApplicationsSmart Grid Security and Resilience