On Mitigating the Utility-Loss in Differentially Private Learning: : A New Perspective by a Geometrically Inspired Kernel Approach
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On mitigating the utility-loss in differentially private learning: a new perspective by a geometrically inspired kernel approach (abstract reprint)
IJCAI '24: Proceedings of the Thirty-Third International Joint Conference on Artificial IntelligencePrivacy-utility tradeoff remains as one of the fundamental issues of differentially private machine learning. This paper introduces a geometrically inspired kernel-based approach to mitigate the accuracy-loss issue in classification. In this approach, a ...
Utility-preserving differentially private data releases via individual ranking microaggregation
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Differentially Private Reinforcement Learning
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El Segundo, CA, United States
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