Mitigating Membership Inference in Deep Survival Analyses with Differential Privacy.

Liyue Fan, Luca Bonomi
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Abstract

Deep neural networks have been increasingly integrated in healthcare applications to enable accurate predicative analyses. Sharing trained deep models not only facilitates knowledge integration in collaborative research efforts but also enables equitable access to computational intelligence. However, recent studies have shown that an adversary may leverage a shared model to learn the participation of a target individual in the training set. In this work, we investigate privacy-protecting model sharing for survival studies. Specifically, we pose three research questions. (1) Do deep survival models leak membership information? (2) How effective is differential privacy in defending against membership inference in deep survival analyses? (3) Are there other effects of differential privacy on deep survival analyses? Our study assesses the membership leakage in emerging deep survival models and develops differentially private training procedures to provide rigorous privacy protection. The experimental results show that deep survival models leak membership information and our approach effectively reduces membership inference risks. The results also show that differential privacy introduces a limited performance loss, and may improve the model robustness in the presence of noisy data, compared to non-private models.

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利用差异隐私减轻深度生存分析中的成员推断。
深度神经网络已越来越多地集成到医疗保健应用中,以实现准确的预测分析。共享训练有素的深度模型不仅能促进合作研究工作中的知识整合,还能实现对计算智能的公平获取。然而,最近的研究表明,对手可能会利用共享模型来了解目标个体在训练集中的参与情况。在这项工作中,我们研究了用于生存研究的隐私保护模型共享。具体来说,我们提出了三个研究问题。(1) 深度生存模型会泄露成员信息吗?(2) 在深度生存分析中,差异隐私对防御成员推断的效果如何?(3) 差异隐私对深度生存分析是否有其他影响?我们的研究评估了新兴深度生存模型中的成员信息泄露,并开发了差异化隐私训练程序,以提供严格的隐私保护。实验结果表明,深度生存模型会泄露成员信息,而我们的方法能有效降低成员推断风险。实验结果还表明,与非隐私模型相比,差异化隐私会带来有限的性能损失,并可能提高模型在高噪声数据存在时的鲁棒性。
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