基于隐私保护密度的离群点检测

Zaisheng Dai, Liusheng Huang, Youwen Zhu, Wei Yang
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引用次数: 6

摘要

异常值检测在入侵检测、欺诈检测、图像处理等领域有着广泛的应用。在众多离群点检测算法中,LOF是一种非常重要的基于密度的算法,该算法的关键一步是寻找k距离的邻居。在某些保护隐私的情况下,数据持有人之间的合作是必要的,同时参与者的隐私也应该得到保障。本文主要研究隐私保护的LOF。提出了一种保护隐私的k距离邻居搜索算法。将其与其他安全多方计算技术相结合,在保护隐私的前提下,利用LOF检测异常值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Privacy Preserving Density-Based Outlier Detection
Outlier detection can find its tremendous applications in areas such as intrusion detection, fraud detection, and image processing. Among many outlier detection algorithms, LOF is a very important density-based algorithm in which one critical step is to find the k-distance neighbors. In some privacy preserving circumstances, the cooperation between data holders is necessary while the privacy of the participators should be guaranteed. In this paper, we focus on privacy preserving LOF. We propose a novel algorithm for privacy preserving k-distance neighbors search. Combining it with other secure multiparty computation techniques, we detect outliers by LOF in a privacy preserving way.
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