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The ComMA Dataset V0.2: Annotating Aggression and Bias in Multilingual Social Media Discourse

Ritesh Kumar,Shyam Ratan, Siddharth Singh, Enakshi Nandi, Laishram Niranjana Devi,Akash Bhagat,Yogesh Dawer, Bornini Lahiri, Akanksha Bansal, Atul Kr. Ojha

LREC 2022 THIRTEEN INTERNATIONAL CONFERENCE ON LANGUAGE RESOURCES AND EVALUATION(2022)

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摘要
In this paper, we discuss the development of a multilingual dataset annotated with a hierarchical, fine-grained tagset marking different types of aggression and the "context" in which they occur. The context, here, is defined by the conversational thread in which a specific comment occurs and also the "type" of discursive role that the comment is performing with respect to the previous comment. The initial dataset, being discussed here consists of a total 59,152 annotated comments in four languages Meitei, Bangla, Hindi, and Indian English - collected from various social media platforms such as YouTube, Facebook, Twitter and Telegram. As is usual on social media websites, a large number of these comments are multilingual, mostly code-mixed with English. The paper gives a detailed description of the tagset being used for annotation and also the process of developing a multi-label, fine-grained tagset that has been used for marking comments with aggression and bias of various kinds including sexism (called gender bias in the tagset), religious intolerance (called communal bias in the tagset), class/caste bias and ethnic/racial bias. We also define and discuss the tags that have been used for marking the different discursive role being performed through the comments, such as attack, defend, etc. Finally we present a basic statistical analysis of the dataset. The dataset is being incrementally made publicly available on the project website
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关键词
aggression,bias,Meitei,Bangla,Hindi,Tagset
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