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Online Structural Change-point Detection of High-dimensional Streaming Data via Dynamic Sparse Subspace Learning

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Date

2022-03-30

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Volume Title

Publisher

Taylor & Francis

Abstract

High-dimensional streaming data are becoming increasingly ubiquitous in many fields. They often lie in multiple low-dimensional subspaces, and the manifold structures may change abruptly on the time scale due to pattern shift or occurrence of anomalies. However, the problem of detecting the structural changes in a real-time manner has not been well studied. To fill this gap, we propose a dynamic sparse subspace learning approach for online structural change-point detection of high-dimensional streaming data. A novel multiple structural change-point model is proposed and the asymptotic properties of the estimators are investigated. A tuning method based on Bayesian information criterion and change-point detection accuracy is proposed for penalty coefficients selection. An efficient Pruned Exact Linear Time based algorithm is proposed for online optimization and change-point detection. The effectiveness of the proposed method is demonstrated through several simulation studies and a real case study on gesture data for motion tracking. Supplementary materials for this article are available online.

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Keywords

High-dimensional time series, Manifold learning, Multiple change-point model, Subspace clustering, GRAPHICAL MODELS, ALGORITHM, SELECTION, NETWORKS

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