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Graph-Based Change-Point Analysis

Hao Chen, Lynna Chu

2023Annual Review of Statistics and Its Application18 citationsDOIOpen Access PDF

Abstract

Recent technological advances allow for the collection of massive data in the study of complex phenomena over time and/or space in various fields. Many of these data involve sequences of high-dimensional or non-Euclidean measurements, where change-point analysis is a crucial early step in understanding the data. Segmentation, or offline change-point analysis, divides data into homogeneous temporal or spatial segments, making subsequent analysis easier; its online counterpart detects changes in sequentially observed data, allowing for real-time anomaly detection. This article reviews a nonparametric change-point analysis framework that utilizes graphs representing the similarity between observations. This framework can be applied to data as long as a reasonable dissimilarity distance among the observations can be defined. Thus, this framework can be applied to a wide range of applications, from high-dimensional data to non-Euclidean data, such as imaging data or network data. In addition, analytic formulas can be derived to control the false discoveries, making them easy off-the-shelf data analysis tools.

Topics & Concepts

Computer scienceData miningData typeAnomaly detectionGraphRange (aeronautics)Euclidean spacePoint (geometry)Multidimensional analysisEuclidean distanceTheoretical computer scienceArtificial intelligenceMathematicsStatisticsMaterials sciencePure mathematicsComposite materialGeometryProgramming languageBioinformatics and Genomic NetworksHealth, Environment, Cognitive AgingGene Regulatory Network Analysis
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