Secure multiparty computations in floating-point arithmetic

Author:

Guo Chuan1,Hannun Awni2,Knott Brian2,van der Maaten Laurens2,Tygert Mark3,Zhu Ruiyu3

Affiliation:

1. Cornell University, Department of Computer Science, Gates Hall, Ithaca, NY 14853, USA

2. Facebook, Artificial Intelligence Research, 770 Broadway, New York, NY 10003, USA

3. Facebook, 1 Facebook Way, Menlo Park, CA 94025, USA

Abstract

Abstract Secure multiparty computations enable the distribution of so-called shares of sensitive data to multiple parties such that the multiple parties can effectively process the data while being unable to glean much information about the data (at least not without collusion among all parties to put back together all the shares). Thus, the parties may conspire to send all their processed results to a trusted third party (perhaps the data providers) at the conclusion of the computations, with only the trusted third party being able to view the final results. Secure multiparty computations for privacy-preserving machine-learning turn out to be possible using solely standard floating-point arithmetic, at least with a carefully controlled leakage of information less than the loss of accuracy due to roundoff, all backed by rigorous mathematical proofs of worst-case bounds on information loss and numerical stability in finite-precision arithmetic. Numerical examples illustrate the high performance attained on commodity off-the-shelf hardware for generalized linear models, including ordinary linear least-squares regression, binary and multinomial logistic regression, probit regression and Poisson regression.

Publisher

Oxford University Press (OUP)

Subject

Applied Mathematics,Computational Theory and Mathematics,Numerical Analysis,Statistics and Probability,Analysis

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1. Secure Multi-Party Computation for Personalized Human Activity Recognition;Neural Processing Letters;2023-03-10

2. Privacy-preserving training of tree ensembles over continuous data;Proceedings on Privacy Enhancing Technologies;2022-03-03

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