Exploiting Unintended Feature Leakage in Collaborative Learning

Luca Melis, Congzheng Song, Emiliano De Cristofaro, Vitaly Shmatikov
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引用次数: 1054

Abstract

Collaborative machine learning and related techniques such as federated learning allow multiple participants, each with his own training dataset, to build a joint model by training locally and periodically exchanging model updates. We demonstrate that these updates leak unintended information about participants' training data and develop passive and active inference attacks to exploit this leakage. First, we show that an adversarial participant can infer the presence of exact data points -- for example, specific locations -- in others' training data (i.e., membership inference). Then, we show how this adversary can infer properties that hold only for a subset of the training data and are independent of the properties that the joint model aims to capture. For example, he can infer when a specific person first appears in the photos used to train a binary gender classifier. We evaluate our attacks on a variety of tasks, datasets, and learning configurations, analyze their limitations, and discuss possible defenses.
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利用协作学习中的非预期特征泄漏
协作机器学习和联邦学习等相关技术允许多个参与者(每个参与者都有自己的训练数据集)通过本地训练和定期交换模型更新来构建联合模型。我们证明了这些更新泄露了参与者训练数据的意外信息,并开发了被动和主动推理攻击来利用这种泄漏。首先,我们展示了一个敌对的参与者可以推断出其他人的训练数据中精确数据点的存在——例如,特定的位置(即成员推理)。然后,我们展示了这个对手如何推断出仅适用于训练数据子集的属性,并且独立于联合模型旨在捕获的属性。例如,他可以推断出一个特定的人第一次出现在用于训练二元性别分类器的照片中的时间。我们在各种任务、数据集和学习配置上评估我们的攻击,分析它们的局限性,并讨论可能的防御措施。
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