论文标题

sf-pate:可扩展,公平和私人汇总教师合奏

SF-PATE: Scalable, Fair, and Private Aggregation of Teacher Ensembles

论文作者

Tran, Cuong, Zhu, Keyu, Fioretto, Ferdinando, Van Hentenryck, Pascal

论文摘要

数据驱动过程的一个关键问题是建立模型,其结果不会歧视某些人口统计群体,包括性别,种族或年龄。为了确保在学习任务中进行非歧视,对小组属性的了解至关重要。但是,实际上,由于法律和道德要求,这些属性可能无法获得。为了应对这一挑战,本文研究了一个保护个人敏感信息隐私的模型,同时还允许其学习非歧视性预测指标。拟议模型的一个关键特征是实现采用现行和非私人公平模型来创建隐私和公平模型。本文分析了准确性,隐私和公平性之间的关系,实验评估说明了所提出的模型对几个预测任务的好处。特别是,该建议是第一个允许对非常大的神经网络对私人和公平模型进行可扩展和准确培训。

A critical concern in data-driven processes is to build models whose outcomes do not discriminate against some demographic groups, including gender, ethnicity, or age. To ensure non-discrimination in learning tasks, knowledge of the group attributes is essential. However, in practice, these attributes may not be available due to legal and ethical requirements. To address this challenge, this paper studies a model that protects the privacy of the individuals' sensitive information while also allowing it to learn non-discriminatory predictors. A key characteristic of the proposed model is to enable the adoption of off-the-selves and non-private fair models to create a privacy-preserving and fair model. The paper analyzes the relation between accuracy, privacy, and fairness, and the experimental evaluation illustrates the benefits of the proposed models on several prediction tasks. In particular, this proposal is the first to allow both scalable and accurate training of private and fair models for very large neural networks.

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