SMAP: A Joint Dimensionality Reduction Scheme for Secure Multi-Party Visualization

Jiazhi Xia, Tianxiang Chen, Lei Zhang, Wei Chen, Yang Chen, X. Zhang, C. Xie, T. Schreck
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引用次数: 9

Abstract

Nowadays, as data becomes increasingly complex and distributed, data analyses often involve several related datasets that are stored on different servers and probably owned by different stakeholders. While there is an emerging need to provide these stakeholders with a full picture of their data under a global context, conventional visual analytical methods, such as dimensionality reduction, could expose data privacy when multi-party datasets are fused into a single site to build point-level relationships. In this paper, we reformulate the conventional t-SNE method from the single-site mode into a secure distributed infrastructure. We present a secure multi-party scheme for joint t-SNE computation, which can minimize the risk of data leakage. Aggregated visualization can be optionally employed to hide disclosure of point-level relationships. We build a prototype system based on our method, SMAP, to support the organization, computation, and exploration of secure joint embedding. We demonstrate the effectiveness of our approach with three case studies, one of which is based on the deployment of our system in real-world applications.
安全多方可视化的联合降维方案
如今,随着数据变得越来越复杂和分布式,数据分析通常涉及多个相关的数据集,这些数据集存储在不同的服务器上,可能由不同的利益相关者拥有。虽然需要为这些利益相关者提供全球背景下的数据全貌,但传统的可视化分析方法,如降维,可能会在将多方数据集融合到单个站点中以建立点级关系时暴露数据隐私。在本文中,我们将传统的t-SNE方法从单站点模式重新制定为安全的分布式基础设施。我们提出了一种安全的多方联合t-SNE计算方案,可以最大限度地降低数据泄露的风险。可以选择使用聚合可视化来隐藏点级关系的披露。我们基于我们的方法SMAP构建了一个原型系统,以支持安全关节嵌入的组织、计算和探索。我们通过三个案例研究展示了我们方法的有效性,其中一个案例研究基于我们的系统在实际应用程序中的部署。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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