Deakin University
Browse

Detecting Change Intervalswith Isolation Distributional Kernel (Abstract Reprint)

Version 2 2024-12-17, 02:39
Version 1 2024-09-10, 02:39
conference contribution
posted on 2024-12-17, 02:39 authored by Charles Cao, Ye Zhu, Kai Ming Ting, Flora D Salim, Hong Xian Li, Luxing YangLuxing Yang, Gang Li
Detecting abrupt changes in data distribution is one of the most significant tasks in streaming data analysis. Although many unsupervised Change-Point Detection (CPD) methods have been proposed recently to identify those changes, they still suffer from missing subtle changes, poor scalability, or/and sensitivity to outliers. To meet these challenges, we are the first to generalise the CPD problem as a special case of the Change-Interval Detection (CID) problem. Then we propose a CID method, named iCID, based on a recent Isolation Distributional Kernel (IDK). iCID identifies the change interval if there is a high dissimilarity score between two non-homogeneous temporal adjacent intervals. The data-dependent property and finite feature map of IDK enabled iCID to efficiently identify various types of change-points in data streams with the tolerance of outliers. Moreover, the proposed online and offline versions of iCID have the ability to optimise key parameter settings. The effectiveness and efficiency of iCID have been systematically verified on both synthetic and real-world datasets.

History

Pagination

8476-8476

Start date

2023-08-19

End date

2023-08-25

Publication classification

E3 Extract of paper

Title of proceedings

Proceedings of the Thirty-ThirdInternational Joint Conference on Artificial Intelligence

Event

Thirty-Third International Joint Conference on Artificial Intelligence {IJCAI-24}

Publisher

International Joint Conferences on Artificial Intelligence Organization

Usage metrics

    Research Publications

    Exports

    RefWorks
    BibTeX
    Ref. manager
    Endnote
    DataCite
    NLM
    DC