Improved Differentially Private Regression via Gradient Boosting

March 06, 2023 ยท Declared Dead ยท ๐Ÿ› 2024 IEEE Conference on Secure and Trustworthy Machine Learning (SaTML)

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Authors Shuai Tang, Sergul Aydore, Michael Kearns, Saeyoung Rho, Aaron Roth, Yichen Wang, Yu-Xiang Wang, Zhiwei Steven Wu arXiv ID 2303.03451 Category cs.LG: Machine Learning Cross-listed cs.CR Citations 6 Venue 2024 IEEE Conference on Secure and Trustworthy Machine Learning (SaTML) Last Checked 4 months ago
Abstract
We revisit the problem of differentially private squared error linear regression. We observe that existing state-of-the-art methods are sensitive to the choice of hyperparameters -- including the ``clipping threshold'' that cannot be set optimally in a data-independent way. We give a new algorithm for private linear regression based on gradient boosting. We show that our method consistently improves over the previous state of the art when the clipping threshold is taken to be fixed without knowledge of the data, rather than optimized in a non-private way -- and that even when we optimize the hyperparameters of competitor algorithms non-privately, our algorithm is no worse and often better. In addition to a comprehensive set of experiments, we give theoretical insights to explain this behavior.
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