@inproceedings{69e5dbcdf6f1447b82af3d1f2956bd5a,
title = "Towards Distributed Privacy-Preserving Prediction",
abstract = "In privacy-preserving machine learning, individual parties are reluctant to share their sensitive training data due to privacy concerns. Even the trained model parameters or prediction can pose serious privacy leakage. To address these problems, we demonstrate a generally applicable Distributed Privacy-Preserving Prediction (DPPP) framework, in which instead of sharing more sensitive data or model parameters, an untrusted aggregator combines only multiple models' predictions under provable privacy guarantee. Our framework integrates two main techniques to guarantee individual privacy. First, we introduce the improved Binomial Mechanism and Discrete Gaussian Mechanism to achieve distributed differential privacy. Second, we utilize homomorphic encryption to ensure that the aggregator learns nothing but the noisy aggregated prediction. Experimental results demonstrate that our framework has comparable performance to the non-private frameworks and delivers better results than the local differentially private framework and standalone framework.",
keywords = "distributed differential privacy, homomorphic encryption, prediction, Privacy-Preserving",
author = "Lingjuan Lyu and Law, {Yee Wei} and {Siong Ng}, Kee and Shibei Xue and Jun Zhao and Mengmeng Yang and Lei Liu",
note = "Publisher Copyright: {\textcopyright} 2020 IEEE.; 2020 IEEE International Conference on Systems, Man, and Cybernetics, SMC 2020 ; Conference date: 11-10-2020 Through 14-10-2020",
year = "2020",
month = oct,
day = "11",
doi = "10.1109/SMC42975.2020.9283102",
language = "English",
series = "Conference Proceedings - IEEE International Conference on Systems, Man and Cybernetics",
publisher = "Institute of Electrical and Electronics Engineers Inc.",
pages = "4179--4184",
booktitle = "2020 IEEE International Conference on Systems, Man, and Cybernetics, SMC 2020",
address = "United States",
}