커뮤니티 통계량에 기반한 사회 연결망 모니터링 절차

A social network monitoring procedure based on community statistics
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초록

Recently, monitoring and detecting anomalies in social networks have become an interesting research topic. In this study, we investigate the detection of abnormal changes in a network modeled by the DCSBM (degree corrected stochastic block model), which reflects the propensity of both individuals and communities. To this end, we propose three methods for anomaly detection in the DCSBM networks: One method for monitoring the entire network, and two methods for dividing and monitoring the network in consideration of communities. To compare these anomaly detection methods, we design and perform simulations. The simulation results show that the method for monitoring networks divided by communities has good performance.

키워드

비정상적인 변화 탐지사회 연결망연결망 모니터링통계적 공정 모니터링abnormal detectionnetwork monitoringsocial networkstatistical process monitoringSTOCHASTIC BLOCKMODELSPREDICTIONAVERAGEGRAPHS
제목
커뮤니티 통계량에 기반한 사회 연결망 모니터링 절차
제목 (타언어)
A social network monitoring procedure based on community statistics
저자
이주원이재헌
DOI
10.5351/KJAS.2023.36.5.399
발행일
2023-10
유형
Article
저널명
응용통계연구
36
5
페이지
399 ~ 413