Defenses to Membership Inference Attacks: A Survey

Author:

Hu Li1ORCID,Yan Anli1ORCID,Yan Hongyang1ORCID,Li Jin1ORCID,Huang Teng1ORCID,Zhang Yingying1ORCID,Dong Changyu1ORCID,Yang Chunsheng2ORCID

Affiliation:

1. Guangzhou University, China

2. National Research Council Canada, Canada and Guangzhou University, China

Abstract

Machine learning (ML) has gained widespread adoption in a variety of fields, including computer vision and natural language processing. However, ML models are vulnerable to membership inference attacks (MIAs), which can infer whether access data was used in training a target model, thus compromising the privacy of training data. This has led researchers to focus on protecting the privacy of ML. To date, although there have been extensive efforts to defend against MIAs, we still lack a comprehensive understanding of the progress made in this area, which can often impede our ability to design the most effective defense strategies. In this article, we aim to fill this critical knowledge gap by providing a systematic analysis of membership inference defense. Specifically, we classify and summarize the existing membership inference defense schemes, focusing on optimization phase and objective, basic intuition, and key technology, and we discuss possible research directions of membership inference defense in the future.

Funder

National Natural Science Foundation of China

National Natural Science Foundation of China for Joint Fund Project

Basic Innovation Project for Full-time Postgraduates of Guangzhou University

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science,Theoretical Computer Science

Reference107 articles.

1. Deep Learning with Differential Privacy

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4. Membership inference attacks from first principles;Carlini Nicholas;arXiv preprint arXiv:2112.03570,2021

5. Nicholas Carlini Florian Tramer Eric Wallace Matthew Jagielski Ariel Herbert-Voss Katherine Lee Adam Roberts Tom Brown Dawn Song Ulfar Erlingsson Oprea Alina and Colin Raffel. 2021. Extracting training data from large language models. In 30th USENIX Security Symposium (USENIX Security’21) . 2633–2650.

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