Computing Correlation Anomaly Scores Using Stochastic Nearest Neighbors

T. Idé, S. Papadimitriou, M. Vlachos
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引用次数: 81

Abstract

This paper addresses the task of change analysis of correlated multi-sensor systems. The goal of change analysis is to compute the anomaly score of each sensor when we know that the system has some potential difference from a reference state. Examples include validating the proper performance of various car sensors in the automobile industry. We solve this problem based on a neighborhood preservation principle - If the system is working normally, the neighborhood graph of each sensor is almost invariant against the fluctuations of experimental conditions. Here a neighborhood graph is defined based on the correlation between sensor signals. With the notion of stochastic neighborhood, our method is capable of robustly computing the anomaly score of each sensor under conditions that are hard to be detected by other naive methods.
利用随机近邻计算相关异常分数
本文研究了相关多传感器系统的变化分析问题。变化分析的目标是当我们知道系统与参考状态有一些潜在的差异时,计算每个传感器的异常分数。示例包括验证汽车工业中各种汽车传感器的适当性能。我们基于邻域保持原理来解决这个问题——如果系统正常工作,每个传感器的邻域图对于实验条件的波动几乎是不变的。这里根据传感器信号之间的相关性定义一个邻域图。利用随机邻域的概念,我们的方法能够在其他朴素方法难以检测到的情况下鲁棒地计算每个传感器的异常分数。
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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