Publication | Open Access
Concept Drift and Anomaly Detection in Graph Streams
53
Citations
40
References
2018
Year
Anomaly DetectionEngineeringNetwork AnalysisGraph Signal ProcessingStreaming AlgorithmVector DomainGraph ProcessingConcept DriftApplication DomainsData ScienceData MiningStochastic ProcessesProbabilistic Graph TheoryGraphical ModelKnowledge DiscoveryComputer ScienceNetwork ScienceGraph TheoryData Stream MiningComputational BiologyBusinessGraph AnalysisSystems Biology
Graph representations offer powerful and intuitive ways to describe data in a multitude of application domains. Here, we consider stochastic processes generating graphs and propose a methodology for detecting changes in stationarity of such processes. The methodology is general and considers a process generating attributed graphs with a variable number of vertices/edges, without the need to assume a one-to-one correspondence between vertices at different time steps. The methodology acts by embedding every graph of the stream into a vector domain, where a conventional multivariate change detection procedure can be easily applied. We ground the soundness of our proposal by proving several theoretical results. In addition, we provide a specific implementation of the methodology and evaluate its effectiveness on several detection problems involving attributed graphs representing biological molecules and drawings. Experimental results are contrasted with respect to suitable baseline methods, demonstrating the effectiveness of our approach.
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