差分隐私深度学习框架下隐私与效用的最优平衡

O. Kotevska, Folami T. Alamudun, Christopher Stanley
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引用次数: 1

摘要

随着在线服务的增加,被记录的敏感数据的数量也在增加。与此同时,通过使用大量数据,决策过程得到了改善,机器学习已经改变了整个行业。本文讨论了最优私有深度神经网络的发展,并讨论了与此任务相关的挑战。我们专注于不同的隐私实现,并在准确性和隐私之间找到最佳平衡,现有库的优点和局限性,以及在实际应用中应用私有机器学习模型的挑战。我们的分析表明,学习率和隐私预算是影响结果的关键因素,我们讨论了这些设置的选项。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal Balance of Privacy and Utility with Differential Privacy Deep Learning Frameworks
As the number of online services has increased, the amount of sensitive data being recorded is rising. Simultaneously, the decision-making process has improved by using the vast amounts of data, where machine learning has transformed entire industries. This paper addresses the development of optimal private deep neural networks and discusses the challenges associated with this task. We focus on differential privacy implementations and finding the optimal balance between accuracy and privacy, benefits and limitations of existing libraries, and challenges of applying private machine learning models in practical applications. Our analysis shows that learning rate, and privacy budget are the key factors that impact the results, and we discuss options for these settings.
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