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Secure multiparty computations in floating-point arithmetic

机译:浮点算术中的安全多党计算

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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.
机译:安全的多方计算使所谓的敏感数据份额分配给多方,以便多方可以有效地处理数据,同时无法收集有关数据的大量信息(至少没有任何各方之间没有勾结来放回原理所有股票)。因此,当事方在计算结束时,当事方可能将所有处理的结果发送给值得信赖的第三方(也许是数据提供者),只有受信任的第三方才能够查看最终结果。安全的多方计算用于保密机器学习的安全性是可以使用仅标准的浮点算术算术的,至少在仔细控制的信息泄漏的情况下,信息的泄漏小于由于圆形而导致的准确性丧失,全部得到了严格的数学证明,但最糟糕的数学证明 - 关于有限精确算术中信息丢失和数值稳定性的界限。数值示例说明了广义线性模型的商品现成硬件的高性能,包括普通线性最小二乘回归,二进制和多项式逻辑回归,概率回归和泊松回归。

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