Publication | Open Access
Attributed Multi-Relational Attention Network for Fact-checking URL Recommendation
20
Citations
28
References
2019
Year
Unknown Venue
Fake NewsEngineeringSemantic WebLink PredictionJournalismText MiningNatural Language ProcessingComputational Social ScienceSocial MediaInformation RetrievalData ScienceSocial Media SitesDisinformation DetectionSocial Medium MiningKnowledge DiscoveryComputer ScienceFact CheckingMulti-relational Attention NetworkFake News DisseminationArtsCollaborative Filtering
To combat fake news, researchers mostly focused on detecting fake news and journalists built and maintained fact-checking sites (e.g., Snopes.com and Politifact.com). However, fake news dissemination has been greatly promoted via social media sites, and these fact-checking sites have not been fully utilized. To overcome these problems and complement existing methods against fake news, in this paper we propose a deep-learning based fact-checking URL recommender system to mitigate impact of fake news in social media sites such as Twitter and Facebook. In particular, our proposed framework consists of a multi-relational attentive module and a heterogeneous graph attention network to learn complex/semantic relationship between user-URL pairs, user-user pairs, and URL-URL pairs. Extensive experiments on a real-world dataset show that our proposed framework outperforms eight state-of-the-art recommendation models, achieving at least 3$\sim$5.3% improvement. Our source code and dataset are available at \urlhttps://web.cs.wpi.edu/~kmlee/data.html .
| Year | Citations | |
|---|---|---|
Page 1
Page 1