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ArCOV19-Rumors: Arabic COVID-19 Twitter Dataset for Misinformation Detection

Workshop on Arabic Natural Language Processing (WANLP), 2020
17 October 2020
Fatima Haouari
Maram Hasanain
Reem Suwaileh
Tamer Elsayed
ArXiv (abs)PDFHTML
Abstract

In this paper we introduce ArCOV19-Rumors, an Arabic COVID-19 Twitter dataset for misinformation detection composed of tweets containing claims from 27th January till the end of April 2020. We collected 138 verified claims, mostly from popular fact-checking websites, and identified 9.4K relevant tweets to those claims. We then manually-annotated the tweets by veracity to support research on misinformation detection, which is one of the major problems faced during a pandemic. We aim to support two classes of misinformation detection problems over Twitter: verifying free-text claims (called claim-level verification) and verifying claims expressed in tweets (called tweet-level verification). Our dataset covers, in addition to health, claims related to other topical categories that were influenced by COVID-19, namely, social, politics, sports, entertainment, and religious.

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