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SoK: Unintended Interactions among Machine Learning Defenses and Risks

Authors :
Duddu, Vasisht
Szyller, Sebastian
Asokan, N.
Publication Year :
2023

Abstract

Machine learning (ML) models cannot neglect risks to security, privacy, and fairness. Several defenses have been proposed to mitigate such risks. When a defense is effective in mitigating one risk, it may correspond to increased or decreased susceptibility to other risks. Existing research lacks an effective framework to recognize and explain these unintended interactions. We present such a framework, based on the conjecture that overfitting and memorization underlie unintended interactions. We survey existing literature on unintended interactions, accommodating them within our framework. We use our framework to conjecture on two previously unexplored interactions, and empirically validate our conjectures.<br />Comment: IEEE Symposium on Security and Privacy (S&P) 2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2312.04542
Document Type :
Working Paper