On the Use of Vertex-Frequency Analysis for Anomaly Detection in Graph Signals

Gabriela Lewenfus, W. Martins, S. Chatzinotas, B. Ottersten
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引用次数: 2

Abstract

Graph signals (GS) are widespread in many areas of data analysis, such as in social, genetics, and biomolecular networks as well as in several engineering applications. Detecting localized properties of GS using spectral tools while taking into account the underlying graph topology is still an active research topic called vertex-frequency analysis (VFA). This paper provides a brief and up-to-date overview on state-of-the-art VFA tools, namely windowed graph Fourier transform and spectral graph wavelet transform. In addition, the paper shows how VFA can be applied to detect and localize anomalies in GS. In the particular example of localizing a malfunctioning weather station, the average area under ROC curve achieved by the local factor outlier technique can be improved from 72% to 87% when fed with VFA-extracted features to detect small drifts in temperature measurements, ranging from 0.5C to 4C. Keywords— GSP, vertex-frequency analysis, Fourier transform, wavelets, anomaly detection
点频分析在图信号异常检测中的应用
图信号(GS)广泛应用于数据分析的许多领域,如社会、遗传学、生物分子网络以及一些工程应用。在考虑底层图拓扑的情况下,利用光谱工具检测地磁的局部特性是一个活跃的研究课题,称为顶点频率分析(VFA)。本文提供了最先进的VFA工具的简要和最新的概述,即窗口图傅里叶变换和谱图小波变换。此外,本文还展示了如何应用VFA来检测和定位GS中的异常。在定位故障气象站的特定示例中,当使用vfa提取的特征来检测温度测量中的小漂移(范围从0.5C到4C)时,通过局部因子离群值技术获得的ROC曲线下的平均面积可以从72%提高到87%。关键词:GSP,点频分析,傅里叶变换,小波,异常检测
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