2022
DOI: 10.48550/arxiv.2204.12693
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Distant finetuning with discourse relations for stance classification

Abstract: Approaches for the stance classification task, an important task for understanding argumentation in debates and detecting fake news, have been relying on models which deal with individual debate topics. In this paper, in order to train a system independent from topics, we propose a new method to extract data with silver labels from raw text to finetune a model for stance classification. The extraction relies on specific discourse relation information, which is shown as a reliable and accurate source for provid… Show more

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