Detection of Cross-Channel Anomalies from Multiple Data Channels

Duc-Son Pham, Budhaditya Saha, Dinh Q. Phung, S. Venkatesh
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引用次数: 7

Abstract

We identify and formulate a novel problem: cross channel anomaly detection from multiple data channels. Cross channel anomalies are common amongst the individual channel anomalies, and are often portent of significant events. Using spectral approaches, we propose a two-stage detection method: anomaly detection at a single-channel level, followed by the detection of cross-channel anomalies from the amalgamation of single channel anomalies. Our mathematical analysis shows that our method is likely to reduce the false alarm rate. We demonstrate our method in two applications: document understanding with multiple text corpora, and detection of repeated anomalies in video surveillance. The experimental results consistently demonstrate the superior performance of our method compared with related state-of-art methods, including the one-class SVM and principal component pursuit. In addition, our framework can be deployed in a decentralized manner, lending itself for large scale data stream analysis.
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多数据通道跨通道异常的检测
我们确定并提出了一个新的问题:从多个数据通道进行跨通道异常检测。跨通道异常在个别通道异常中是常见的,并且通常是重大事件的前兆。利用光谱方法,我们提出了一种两阶段检测方法:在单通道水平检测异常,然后从单通道异常合并中检测跨通道异常。我们的数学分析表明,我们的方法有可能降低误报率。我们在两个应用中展示了我们的方法:使用多个文本语料库的文档理解,以及视频监控中重复异常的检测。实验结果一致表明,与一类支持向量机和主成分追踪等相关方法相比,该方法具有优越的性能。此外,我们的框架可以以分散的方式部署,适合大规模数据流分析。
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