Rumor Detection on Twitter with Claim-Guided Hierarchical Graph
Attention Networks
- URL: http://arxiv.org/abs/2110.04522v1
- Date: Sat, 9 Oct 2021 09:24:11 GMT
- Title: Rumor Detection on Twitter with Claim-Guided Hierarchical Graph
Attention Networks
- Authors: Hongzhan Lin, Jing Ma, Mingfei Cheng, Zhiwei Yang, Liangliang Chen and
Guang Chen
- Abstract summary: Rumors are rampant in the era of social media.
In this study, to substantially reinforces the interaction of user opinions, we first represent the conversation thread as an undirected interaction graph.
We then present a Claim-guided Hierarchical Graph Attention Network for rumor classification, which enhances the representation learning for responsive posts.
- Score: 5.167857972528786
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Rumors are rampant in the era of social media. Conversation structures
provide valuable clues to differentiate between real and fake claims. However,
existing rumor detection methods are either limited to the strict relation of
user responses or oversimplify the conversation structure. In this study, to
substantially reinforces the interaction of user opinions while alleviating the
negative impact imposed by irrelevant posts, we first represent the
conversation thread as an undirected interaction graph. We then present a
Claim-guided Hierarchical Graph Attention Network for rumor classification,
which enhances the representation learning for responsive posts considering the
entire social contexts and attends over the posts that can semantically infer
the target claim. Extensive experiments on three Twitter datasets demonstrate
that our rumor detection method achieves much better performance than
state-of-the-art methods and exhibits a superior capacity for detecting rumors
at early stages.
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