基于安全多方计算的垂直保护隐私符号回归

Du Nguyen Duy, M. Affenzeller, R. Nikzad‐Langerodi
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引用次数: 0

摘要

符号回归是一种强大的数据驱动技术,它搜索解释输入变量和感兴趣的目标之间关系的数学表达式。遗传规划由于其效率和灵活性,可以看作是符号回归的标准搜索技术。然而,传统的遗传规划算法需要将所有数据存储在一个中心位置,由于对数据隐私和安全的担忧日益增加,这并不总是可行的。虽然隐私保护研究最近取得了进展,并可能为这个问题提供解决方案,但它们在符号回归中的应用在很大程度上仍未被探索。此外,现有的工作只关注水平分区设置,而另一种流行的垂直分区设置尚未进行研究。在此,我们提出了一种方法,该方法采用一种称为安全多方计算的隐私保护技术,使各方能够在不泄露私有数据的情况下在垂直场景中共同构建符号回归模型。初步的实验结果表明,我们提出的方法在保护数据隐私的同时具有与集中式解决方案相当的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Vertical Privacy-Preserving Symbolic Regression via Secure Multiparty Computation
Symbolic Regression is a powerful data-driven technique that searches for mathematical expressions that explain the relationship between input variables and a target of interest. Due to its efficiency and flexibility, Genetic Programming can be seen as the standard search technique for Symbolic Regression. However, the conventional Genetic Programming algorithm requires storing all data in a central location, which is not always feasible due to growing concerns about data privacy and security. While privacy-preserving research has advanced recently and might offer a solution to this problem, their application to Symbolic Regression remains largely unexplored. Furthermore, the existing work only focuses on the horizontally partitioned setting, whereas the vertically partitioned setting, another popular scenario, has yet to be investigated. Herein, we propose an approach that employs a privacy-preserving technique called Secure Multiparty Computation to enable parties to jointly build Symbolic Regression models in the vertical scenario without revealing private data. Preliminary experimental results indicate that our proposed method delivers comparable performance to the centralized solution while safeguarding data privacy.
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