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arxiv: 2312.06374 · v4 · pith:UD6NKRDA · submitted 2023-12-11 · cs.CL

UstanceBR: a social media language resource for stance prediction

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classification cs.CL
keywords corpuspredictionstanceinformationmediamultimodalsocialstances
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This work introduces UstanceBR, a multimodal corpus in the Brazilian Portuguese Twitter domain for target-based stance prediction. The corpus comprises 86.8 k labelled stances towards selected target topics, and extensive network information about the users who published these stances on social media. In this article we describe the corpus multimodal data, and a number of usage examples in both in-domain and zero-shot stance prediction based on text- and network-related information, which are intended to provide initial baseline results for future studies in the field.

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