具有成员映射的差分私有可转移深度学习

Mohit Kumar
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引用次数: 9

摘要

尽管最近对隐私和可转移深度学习的研究兴趣激增,但优化机器学习模型的隐私要求和性能之间的权衡仍然是一个挑战。这促使开发一种方法,优化隐私保护机制和深度模型的学习,以实现稳健的性能。本文研究了差分隐私框架下的半监督迁移和多任务学习问题。深度自动编码器的另一个概念,称为条件深度成员映射自动编码器(CDMMA),被认为是可转移的深度学习。在面向实践的环境下,可以通过变分优化的方法导出CDMMA学习的解析解。本文提出了一种转移和多任务学习方法,该方法将CDMMA与定制的噪声添加机制相结合,以保护隐私的方式将知识从源域转移到目标域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Differentially private transferrable deep learning with membership-mappings

Differentially private transferrable deep learning with membership-mappings

Despite a recent surge of research interest in privacy and transferrable deep learning, optimizing the tradeoff between privacy requirements and performance of machine learning models remains a challenge. This motivates the development of an approach that optimizes both privacy-preservation mechanism and learning of the deep models for achieving a robust performance. This paper considers the problem of semi-supervised transfer and multi-task learning under differential privacy framework. An alternative conception of deep autoencoder, referred to as Conditionally Deep Membership-Mapping Autoencoder (CDMMA), is considered for transferrable deep learning. Under practice-oriented settings, an analytical solution for the learning of CDMMA can be derived by means of variational optimization. The paper proposes a transfer and multi-task learning approach that combines CDMMA with a tailored noise adding mechanism to transfer knowledge from source to target domain in a privacy-preserving manner.

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