SoK: Comparing Different Membership Inference Attacks with a Comprehensive Benchmark
Jun Niu, Xiaoyan Zhu, Moxuan Zeng, Ge Zhang, Qingyang Zhao, Chunhui, Huang, Yangming Zhang, Suyu An, Yangzhong Wang, Xinghui Yue, Zhipeng He,, Weihao Guo, Kuo Shen, Peng Liu, Yulong Shen, Xiaohong Jiang, Jianfeng Ma,, Yuqing Zhang

TL;DR
This paper introduces MIBench, a comprehensive benchmark for systematically comparing membership inference attacks across diverse scenarios, datasets, and models, revealing limitations in previous comparison methods.
Contribution
The paper develops a detailed benchmark with evaluation scenarios and metrics, enabling fair comparison of 15 MI attacks across 7 datasets and models.
Findings
Some previous comparison results are misleading
MIBench provides a systematic evaluation framework
Different attacks perform variably across scenarios
Abstract
Membership inference (MI) attacks threaten user privacy through determining if a given data example has been used to train a target model. However, it has been increasingly recognized that the "comparing different MI attacks" methodology used in the existing works has serious limitations. Due to these limitations, we found (through the experiments in this work) that some comparison results reported in the literature are quite misleading. In this paper, we seek to develop a comprehensive benchmark for comparing different MI attacks, called MIBench, which consists not only the evaluation metrics, but also the evaluation scenarios. And we design the evaluation scenarios from four perspectives: the distance distribution of data samples in the target dataset, the distance between data samples of the target dataset, the differential distance between two datasets (i.e., the target dataset and…
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Taxonomy
TopicsHIV, Drug Use, Sexual Risk · Network Security and Intrusion Detection
