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High-Precision Privacy-Preserving Real-Valued Function Evaluation

机译:高精度隐私保护实值函数评估

摘要

A method for performing privacy-preserving or secure multi-party computations enables multiple parties to collaborate to produce a shared result while preserving the privacy of input data contributed by individual parties. The method can produce a result with a specified high degree of precision or accuracy in relation to an exactly accurate plaintext (non-privacy-preserving) computation of the result, without unduly burdensome amounts of inter-party communication. The multi-party computations can include a Fourier series approximation of a continuous function or an approximation of a continuous function using trigonometric polynomials, for example, in training a machine learning classifier using secret shared input data. The multi-party computations can include a secret share reduction that transforms an instance of computed secret shared data stored in floating-point representation into an equivalent, equivalently precise, and equivalently secure instance of computed secret shared data having a reduced memory storage requirement.
机译:一种用于执行隐私保护或安全的多方计算的方法,使得多方可以协作以产生共享的结果,同时保留由各个方贡献的输入数据的私密性。相对于结果的精确准确的明文(不保留隐私)的计算,该方法可以产生具有指定的高精度或准确性的结果,而不会过多地增加双方之间的通信量。多方计算可以包括使用三角多项式的连续函数的傅立叶级数逼近或连续函数的近似值,例如,在使用秘密共享输入数据训练机器学习分类器时。多方计算可包括秘密共享减少,该秘密共享减少将以浮点表示形式存储的计算的秘密共享数据的实例转换为具有减少的存储器存储需求的计算的秘密共享数据的等效,等效精确和等效安全的实例。

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