"Private Prediction Strikes Back!'' Private Kernelized Nearest Neighbors with Individual Renyi Filter

Zhu, Yuqing, Zhao, Xuandong, Guo, Chuan, Wang, Yu-Xiang

arXiv.org Artificial Intelligence 

Despite its many advantages, private training lacks the flexibility in adapting to incremental changes to the training dataset such as deletion requests from exercising GDPR's right to be forgotten. We revisit a long-forgotten alternative, known as private prediction [Dwork and Feldman, 2018], and propose a new algorithm named Individual Kernelized Nearest Neighbor (Ind-KNN). Ind-KNN is easily updatable over dataset changes and it allows precise control of the Rényi DP at an individual user level -- a user's privacy loss is measured by the exact amount of her contribution to predictions; and a user is removed if her prescribed privacy budget runs out. Our results show that Ind-KNN consistently improves the accuracy over existing private prediction methods for a wide range of ɛ on four vision and language tasks. We also illustrate several cases under which Ind-KNN is preferable over private training with NoisySGD.

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