Privacy-aware supervised classification: An informative subspace based multi-objective approach

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摘要

Sharing the raw or an abstract representation of a labelled dataset on cloud platforms can potentially expose sensitive information of the data to an adversary, e.g., in the case of an emotion classification task from text, an adversary-agnostic abstract representation of the text data may eventually lead an adversary to identify the demographics of the authors, such as their gender and age. In this paper, we propose a universal defense mechanism against such malicious attempts of stealing sensitive information from data shared on cloud platforms. More specifically, our proposed method employs an informative subspace based multi-objective approach to obtain a sensitive information aware encoding of the data representation. A number of experiments conducted on both standard text and image datasets demonstrate that our proposed approach is able to reduce the effectiveness of the adversarial task (i.e., in other words is able to better protect the sensitive information of the data) without significantly reducing the effectiveness of the primary task itself.

论文关键词:Privacy preserving representation learning,Informative subspace,Multi-objective learning,Defence against information stealing adversarial attacks

论文评审过程:Received 7 December 2020, Revised 12 March 2021, Accepted 2 September 2021, Available online 3 September 2021, Version of Record 9 September 2021.

论文官网地址:https://doi.org/10.1016/j.patcog.2021.108301