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Unsupervised Machine Learning on Encrypted Data

机译:无监督机器学习加密数据

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摘要

In the context of Fully Homomorphic Encryption, which allows computations on encrypted data, Machine Learning has been one of the most popular applications in the recent past. All of these works, however, have focused on supervised learning, where there is a labeled training set that is used to configure the model. In this work, we take the first step into the realm of unsupervised learning, which is an important area in Machine Learning and has many real-world applications, by addressing the clustering problem. To this end, we show how to implement the K-Means-Algorithm. This algorithm poses several challenges in the FHE context, including a division, which we tackle by using a natural encoding that allows division and may be of independent interest. While this theoretically solves the problem, performance in practice is not optimal, so we then propose some changes to the clustering algorithm to make it executable under more conventional encodings. We show that our new algorithm achieves a clustering accuracy comparable to the original K-Means-Algorithm, but has less than 5% of its runtime.
机译:在完全同一性加密的背景下,允许对加密数据计算,机器学习是最近过去最受欢迎的应用之一。然而,所有这些都集中在受监督的学习中,其中有一个标记的训练集,用于配置模型。在这项工作中,我们将第一步进入无监督学习的领域,这是机器学习中的一个重要领域,并通过解决聚类问题来拥有许多真实应用。为此,我们展示了如何实现K-Meancy-算法。该算法在FHE上下文中造成了几个挑战,包括一个划分,我们通过使用允许划分的自然编码来解决,并且可能是独立的兴趣。虽然在理论上解决了问题,但实践中的性能不是最佳的,因此我们提出了对聚类算法的一些改变,使其在更传统的编码下可执行。我们表明,我们的新算法达到了与原始k均值算法相当的聚类精度,但占其运行时的5%。

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