Privacy-Preserving Knowledge Transfer through Partial Parameter Sharing

Paul Youssef, Jörg Schlötterer, C. Seifert
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引用次数: 1

Abstract

Valuable datasets that contain sensitive information are not shared due to privacy and copyright concerns. This hinders progress in many areas and prevents the use of machine learning solutions to solve relevant tasks. One possible solution is sharing models that are trained on such datasets. However, this is also associated with potential privacy risks due to data extraction attacks. In this work, we propose a solution based on sharing parts of the model’s parameters, and using a proxy dataset for complimentary knowledge transfer. Our experiments show encouraging results, and reduced risk to potential training data identification attacks. We present a viable solution to sharing knowledge with data-disadvantaged parties, that do not have the resources to produce high-quality data, with reduced privacy risks to the sharing parties. We make our code publicly available.
基于部分参数共享的保护隐私的知识传递
由于隐私和版权问题,包含敏感信息的有价值的数据集不会共享。这阻碍了许多领域的进步,并阻碍了使用机器学习解决方案来解决相关任务。一个可能的解决方案是共享在这些数据集上训练过的模型。然而,由于数据提取攻击,这也与潜在的隐私风险相关。在这项工作中,我们提出了一种基于共享部分模型参数的解决方案,并使用代理数据集进行互补知识转移。我们的实验显示了令人鼓舞的结果,并降低了潜在训练数据识别攻击的风险。我们提出了一种可行的解决方案,与数据劣势方(没有资源产生高质量数据)共享知识,同时降低了共享方的隐私风险。我们让代码公开可用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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