E. Aharoni, Nir Drucker, Eyal Kushnir, Ramy Masalha, Hayim Shaul
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引用次数: 1
摘要
单热图在人工智能领域是常用的。毫不奇怪,它们也可以为基于ml的算法带来巨大的好处,例如在同态加密(HE)下运行的决策树,特别是CKKS。该领域之前的研究使用了这些地图,但假设客户端对它们进行了加密。在这里,我们考虑了可能影响客户决定如何打包和存储这些地图的不同权衡。在处理加密数据时,我们建议使用几种转换算法,并报告其成本。我们的目标是为ML over HE设计器提供实现加密单热地图所需的数据。
One-hot maps are commonly used in the AI domain. Unsurprisingly, they can also bring great benefits to ML-based algorithms such as decision trees that run under Homomorphic Encryption (HE), specifically CKKS. Prior studies in this domain used these maps but assumed that the client encrypts them. Here, we consider different tradeoffs that may affect the client's decision on how to pack and store these maps. We suggest several conversion algorithms when working with encrypted data and report their costs. Our goal is to equip the ML over HE designer with the data it needs for implementing encrypted one-hot maps.