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Privacy-Preserving Computations of Predictive Medical Models with Minimax Approximation and Non-Adjacent Form

机译:具有最小值近似和非相邻形式的预测医疗模型的隐私保留计算

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In 2014, Bos et al. introduced a cloud service scenario to provide private predictive analyses on encrypted medical data, and gave a proof of concept implementation by utilizing homomorphic encryption (HE) scheme. In their implementation, they needed to approximate an analytic predictive model to a polynomial, using Taylor approximations. However, their approach could not reach a satisfactory compromise so that they just restricted the pool of data to guarantee suitable accuracy. In this paper, we suggest and implement a new efficient approach to provide the service using minimax approximation and Non-Adjacent Form (NAF) encoding. With our method, it is possible to remove the limitation of input range and reduce maximum errors, allowing faster analyses than the previous work. Moreover, we prove that the NAF encoding allows us to use more efficient parameters than the binary encoding used in the previous work or balaced base-B encoding. For comparison with the previous work, we present implementation results using HElib. Our implementation gives a prediction with 7-bit precision (of maximal error 0.0044) for having a heart attack, and makes the prediction in 0.5 s on a single laptop. We also implement the private healthcare service analyzing a Cox Proportional Hazard Model for the first time.
机译:2014年,Bos等人。引入了云服务场景,以提供加密的医疗数据的私人预测分析,并通过利用同性恋加密(HE)方案给出了概念实现的证明。在其实现中,他们需要使用泰勒近似来近似到多项式的分析预测模型。然而,他们的方法无法达到令人满意的妥协,以便他们只是限制了数据池以保证适当的准确性。在本文中,我们建议并实现了一种新的高效方法,以使用Minimax近似和非相邻形式(NAF)编码提供服务。通过我们的方法,可以删除输入范围的限制并降低最大误差,允许比以前的工作更快地分析。此外,我们证明了NAF编码允许我们比上一个工作中使用的二进制编码使用的比较参数更高。与以前的工作相比,我们使用赫布展示了实现结果。我们的实现为具有心脏病发作的7位精度(最大误差0.0044)提供了预测,并在单个笔记本电脑上进行0.5秒的预测。我们还首次实施私人医疗服务分析COX比例危险模型。

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