What Really is a Member? Discrediting Membership Inference via Poisoning
What Really is a Member? Discrediting Membership Inference via Poisoning
Membership inference tests aim to determine whether a particular data point was included in a language model's training set. However, recent works have shown that such tests often fail under the strict definition of membership based on exact matching, and have suggested relaxing this definition to include semantic neighbors as members as well. In this work, we show that membership inference tests are still unreliable under this relaxation - it is possible to poison the training dataset in a way that causes the test to produce incorrect predictions for a target point. We theoretically reveal a trade-off between a test's accuracy and its robustness to poisoning. We also present a concrete instantiation of this poisoning attack and empirically validate its effectiveness. Our results show that it can degrade the performance of existing tests to well below random.
Neal Mangaokar、Ashish Hooda、Zhuohang Li、Bradley A. Malin、Kassem Fawaz、Somesh Jha、Atul Prakash、Amrita Roy Chowdhury
计算技术、计算机技术
Neal Mangaokar,Ashish Hooda,Zhuohang Li,Bradley A. Malin,Kassem Fawaz,Somesh Jha,Atul Prakash,Amrita Roy Chowdhury.What Really is a Member? Discrediting Membership Inference via Poisoning[EB/OL].(2025-06-06)[2025-06-27].https://arxiv.org/abs/2506.06003.点此复制
评论