연구 분야: Safety
학회: Social Network Analysis and Mining
In today’s digital landscape, YouTube’s comment sections play an essential role in shaping public opinion and discussions. However, coordinated groups often exploit these platforms to spread misinformation and distort conversations. This study introduces a method to detect and quantify such anomalous behavior on YouTube channels by analyzing two key components: commenter behaviors and engagement patterns. Focusing on channels concerning news outlets, geopolitics, and the military, we draw from a dataset with 71 channels, 642,952 videos, 12,425,587 commenters, 123,882,200 comments, 139,985,870 subscribers, and 83,396,188,807 views. Our approach leverages key engagement indicators, such as comments, views, and subscriber counts, alongside an analysis of frequent commenter interactions to identify anomalous patterns. We apply unsupervised techniques, including kernel density estimation (KDE) and Gaussian mixture model (GMM), to assign a score reflecting anomalous commenter behavior. To provide a comprehensive measure of this behavior, we combine commenter and engagement scores both at the feature level and at the output level. At the feature level, we employ cosine similarity and principal component analysis (PCA). At the output level, we propose three scoring methods: harmonic mean (HM), weighted average with interaction term (WAIT), and agreement-weighted maximum (AWM). The resulting score, normalized between 0 and 1, indicates the level of anomalous activity on each channel. We validate our results by comparing detected anomalous channels with actual suspended channels from YouTube, confirming the model’s real-world applicability. By offering a quantifiable measure of this activity, our method helps preserve the integrity of YouTube discussions.
| 발행 연도 | 2025년 |
|---|---|
| 인용수 | 0 |
| 출판 국가 | United States |
| 사이트 | Springer |
| 좋아요 수 | 0 |