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Secure computation of hidden Markov models and secure floating-point arithmetic in the malicious model

机译:在恶意模型中确保隐马尔可夫模型的安全计算和安全浮点算术

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摘要

Hidden Markov model (HMM) is a popular statistical tool with a large number of applications in pattern recognition. In some of these applications, such as speaker recognition, the computation involves personal data that can identify individuals and must be protected. We thus treat the problem of designing privacy-preserving techniques for HMM and companion Gaussian mixture model computation suitable for use in speaker recognition and other applications. We provide secure solutions for both two-party and multi-party computation models and both semi-honest and malicious settings. In the two-party setting, the server does not have access in the clear to either the user-based HMM or user input (i.e., current observations) and thus the computation is based on threshold homomorphic encryption, while the multi-party setting uses threshold linear secret sharing as the underlying data protection mechanism. All solutions use floating-point arithmetic, which allows us to achieve high accuracy and provable security guarantees, while maintaining reasonable performance. A substantial part of this work is dedicated to building secure protocols for floating-point operations in the two-party setting, which are of independent interest.
机译:隐藏的马尔可夫模型(HMM)是一个流行的统计工具,具有大量模式识别。在这些应用中的一些,例如扬声器识别,计算涉及可以识别个人并且必须受到保护的个人数据。因此,我们对适用于扬声器识别和其他应用的肝脏和伴随高斯混合模型计算设计隐私保存技术的问题。我们为双方和多方计算模型和半诚实和恶意设置提供安全解决方案。在双方设置中,服务器在基于用户的HMM或用户输入(即当前观察)中没有访问,因此计算基于阈值均匀加密,而多方设置使用阈值线性秘密共享作为底层数据保护机制。所有解决方案都使用浮点算术,使我们能够实现高精度和可提供的安全保证,同时保持合理的性能。这项工作的大量部分致力于构建双方设置中的浮点操作的安全协议,这些协议是独立兴趣的。

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