Publication | Closed Access
Anomaly detection from multivariate time-series with sparse representation
32
Citations
7
References
2014
Year
Unknown Venue
Anomaly DetectionMachine LearningData ScienceData MiningPattern RecognitionSensor DataEngineeringOutlier DetectionKnowledge DiscoveryFeature ExtractionNovelty DetectionTemporal Pattern RecognitionSignal ProcessingComputer ScienceDimensionality ReductionFunctional Data AnalysisStatistics
Anomaly detection from sensor data is an important data mining application for efficient and secure operation of complicated systems. In this study, we propose a novel anomaly detection method for multivariate time-series to capture relationships of variables and time-domain correlations simultaneously, without assuming any generative models of signals. The supposed framework in this study is a semi-supervised anomaly detection where we seek unusual parts of test data compared with reference data. The proposed method is based on feature extraction with sparse representation and relationship learning with dimensionality reduction. Our idea comes from the similarity between a sparse feature matrix extracted from multivariate time-series and a term-document matrix. We conducted experiments with synthetic and simulated data, and confirmed that the proposed method successfully detected anomalies in multivariate time-series signals. Especially, it demonstrated superior performance with anomalies in which only relationships of time-series patterns are changed from reference data (multivariate anomalies).
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