Check square at CheckThat! 2020: Claim Detection in Social Media via Fusion of Transformer and Syntactic Features

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Date
2020
Volume
2696
Issue
Journal
Series Titel
Book Title
Publisher
Aachen, Germany : RWTH Aachen
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Abstract

In this digital age of news consumption, a news reader has the ability to react, express and share opinions with others in a highly interactive and fast manner. As a consequence, fake news has made its way into our daily life because of very limited capacity to verify news on the Internet by large companies as well as individuals. In this paper, we focus on solving two problems which are part of the fact-checking ecosystem that can help to automate fact-checking of claims in an ever increasing stream of content on social media. For the first prob-lem, claim check-worthiness prediction, we explore the fusion of syntac-tic features and deep transformer Bidirectional Encoder Representations from Transformers (BERT) embeddings, to classify check-worthiness of a tweet, i.e. whether it includes a claim or not. We conduct a detailed feature analysis and present our best performing models for English and Arabic tweets. For the second problem, claim retrieval, we explore the pre-trained embeddings from a Siamese network transformer model (sentence-transformers) specifically trained for semantic textual similar-ity, and perform KD-search to retrieve verified claims with respect to a query tweet.

Description
Keywords
Check-Worthiness, Fact-Checking, Social Media, Twitter, COVID-19, SVM, BERT, Retrieval, Text Classification, Konferenzschrift
Citation
Cheema, G. S., Hakimov, S., & Ewerth, R. (2020). Check square at CheckThat! 2020: Claim Detection in Social Media via Fusion of Transformer and Syntactic Features (L. Cappellato, C. Eickhoff, N. Ferro, & A. Névéol, eds.). Aachen, Germany : RWTH Aachen.
License
CC BY 4.0 Unported