Training on Fake Labels: Mitigating Label Leakage in Split Learning via Secure Dimension Transformation
Yukun Jiang, Peiran Wang, Chengguo Lin, Ziyue Huang, Yong Cheng

TL;DR
This paper introduces a novel split learning approach with a secure dimension transformation module and gradient normalization to defend against label inference attacks while maintaining model utility.
Contribution
The paper proposes SecDT, a bidirectional label transformation module, and a gradient normalization technique to enhance privacy in split learning without sacrificing accuracy.
Findings
Effective reduction of attack AUC by over 0.45 on Avazu dataset.
Outperforms existing defense methods in privacy preservation.
Maintains high utility of models across multiple datasets.
Abstract
Two-party split learning has emerged as a popular paradigm for vertical federated learning. To preserve the privacy of the label owner, split learning utilizes a split model, which only requires the exchange of intermediate representations (IRs) based on the inputs and gradients for each IR between two parties during the learning process. However, split learning has recently been proven to survive label inference attacks. Though several defense methods could be adopted, they either have limited defensive performance or significantly negatively impact the original mission. In this paper, we propose a novel two-party split learning method to defend against existing label inference attacks while maintaining the high utility of the learned models. Specifically, we first craft a dimension transformation module, SecDT, which could achieve bidirectional mapping between original labels and…
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Taxonomy
TopicsAdvanced Malware Detection Techniques · Academic integrity and plagiarism · Adversarial Robustness in Machine Learning
MethodsGradient Normalization
