Identifying controversial posts on social media is a fundamental task for mining public sentiment, assessing the influence of events, and alleviating the polarized views. However, existing methods fail to 1) effectively incorporate the semantic information from content-related posts; 2) preserve the structural information for reply relationship modeling; 3) properly handle posts from topics dissimilar to those in the training set. To overcome the first two limitations, we propose Topic-Post-Comment Graph Convolutional Network (TPC-GCN), which integrates the information from the graph structure and content of topics, posts, and comments for post-level controversy detection. As to the third limitation, we extend our model to Disentangled TPC-GCN (DTPC-GCN), to disentangle topic-related and topic-unrelated features and then fuse dynamically. Extensive experiments on two real-world datasets demonstrate that our models outperform existing methods. Analysis of the results and cases proves that our models can integrate both semantic and structural information with significant generalizability.
@article{arxiv.2005.07886,
title = {Integrating Semantic and Structural Information with Graph Convolutional Network for Controversy Detection},
author = {Lei Zhong and Juan Cao and Qiang Sheng and Junbo Guo and Ziang Wang},
journal= {arXiv preprint arXiv:2005.07886},
year = {2020}
}
Comments
12 pages, 3 figures, 6 tables; To appear in ACL 2020 (long paper)