Affiliation:
1. Southwest China Institute of Electronic Technology, Chengdu 610036, China
2. School of Cyber Science and Engineering, Sichuan University, Chengdu 610207, China
Abstract
Recently, fake news, such as low-quality news with intentionally false information, has threatened the authenticity of news information. However, existing detection methods are inefficient in modeling complicated data and leveraging external knowledge. To address these limitations, we propose a fake news detection framework based on knowledge-guided semantic analysis, which compares the news to external knowledge through triplets for fake news detection. Considering that equivalent elements of triplets may be presented in different forms, a triplet alignment method is designed to construct the bridge between news documents and knowledge graphs. Then, a dual-branch network is developed to conduct interaction and comparison between text and knowledge embeddings. Specifically, text semantics is analyzed with the guidance generated by a triplet aggregation module to capture the inconsistency between news content and external knowledge. In addition, a triplet scoring module is designed to measure rationality in view of general knowledge as a complementary clue. Finally, an interaction module is proposed to fuse rationality scores in aspects of text semantics and external knowledge to obtain detection results. Extensive experiments are conducted on publicly available datasets and several state-of-the-art methods are considered for comparison. The results verify the superiority of the proposed method in achieving more reliable detection results of fake news.
Reference41 articles.
1. The future of false information detection on social media: New perspectives and trends;Guo;ACM Comput. Surv.,2020
2. Zhao, J., Zhao, Z., Shi, L., Kuang, Z., and Liu, Y. (2023). Collaborative mixture-of-experts model for multi-domain fake news detection. Electronics, 12.
3. Gangireddy, S.C.R., P, D., Long, C., and Chakraborty, T. (2020, January 13–15). Unsupervised fake news detection: A graph-based approach. Proceedings of the HT ’20: 31st ACM Conference on Hypertext and Social Media, Virtual Event.
4. Yuan, L., Shen, H., Shi, L., Cheng, N., and Jiang, H. (2023). An explainable fake news analysis method with stance information. Electronics, 12.
5. Propagation2Vec: Embedding partial propagation networks for explainable fake news early detection;Silva;Inf. Process. Manag.,2021