학술논문

Fréchet-Statistics-Based Change Point Detection in Dynamic Social Networks
Document Type
Periodical
Source
IEEE Transactions on Computational Social Systems IEEE Trans. Comput. Soc. Syst. Computational Social Systems, IEEE Transactions on. 11(2):2863-2871 Apr, 2024
Subject
Computing and Processing
Communication, Networking and Broadcast Technologies
General Topics for Engineers
Measurement
Social networking (online)
Laplace equations
Symmetric matrices
Heuristic algorithms
Extraterrestrial measurements
Computational efficiency
Binary segmentation
change point detection
dynamic social network
Fréchet statistics
metric space
Language
ISSN
2329-924X
2373-7476
Abstract
This article proposes a method to detect change points in dynamic social networks using Fréchet statistics. We address two main questions: 1) what metric can quantify the distances between graph Laplacians in a dynamic network and enable efficient computation, and 2) how can the Fréchet statistics be extended to detect multiple change points while maintaining the significance level of the hypothesis test? Our solution defines a metric space for graph Laplacians using the log-Euclidean metric, enabling a closed-form formula for Fréchet mean and variance. We present a framework for change point detection using Fréchet statistics and extend it to multiple change points with binary segmentation. The proposed algorithm uses incremental computation for Fréchet mean and variance to improve efficiency and is validated on simulated and four real-world datasets, namely, the UCI message dataset, the SFHH interaction dataset, the stack overflow Q&A dataset, and the Enron email dataset.