Detect Rumors in Microblog Posts for Low-Resource Domains via Adversarial Contrastive LearningDownload PDF

Anonymous

08 Mar 2022 (modified: 05 May 2023)NAACL 2022 Conference Blind SubmissionReaders: Everyone
Paper Link: https://openreview.net/forum?id=CXmEYxrhso
Paper Type: Long paper (up to eight pages of content + unlimited references and appendices)
Abstract: Massive false rumors emerging along with breaking news or trending topics severely hinder the truth. Existing rumor detection approaches achieve promising performance on the yesterday's news, since there is enough corpus collected from the same domain for model training. However, they are poor at detecting rumors about unforeseen events especially those propagated in minority languages due to the lack of training data and prior knowledge (i.e., low-resource regimes). In this paper, we propose an adversarial contrastive learning framework to detect rumors by adapting the features learned from well-resourced rumor data to that of the low-resourced. Our model explicitly overcomes the restriction of domain and/or language usage via language alignment and a novel supervised contrastive training paradigm. Moreover, we develop an adversarial augmentation mechanism to further enhance the robustness of low-resource rumor representation. Extensive experiments conducted on two low-resource datasets collected from real-world microblog platforms demonstrate that our framework achieves much better performance than state-of-the-art methods and exhibits a superior capacity for detecting rumors at early stages.
Copyright Consent Signature (type Name Or NA If Not Transferrable): Hongzhan Lin
Copyright Consent Name And Address: 1) Beijing University of Posts and Telecommunications; 2) Hong Kong Baptist University
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