Generating sentential arguments from diverse perspectives on controversial topic

CH Park, W Yang, JC Park - … of the Second Workshop on Natural …, 2019 - aclanthology.org
CH Park, W Yang, JC Park
Proceedings of the Second Workshop on Natural Language Processing for …, 2019aclanthology.org
Considering diverse aspects of an argumentative issue is an essential step for mitigating a
biased opinion and making reasonable decisions. A related generation model can produce
flexible results that cover a wide range of topics, compared to the retrieval-based method
that may show unstable performance for unseen data. In this paper, we study the problem of
generating sentential arguments from multiple perspectives, and propose a neural method
to address this problem. Our model, ArgDiver (Argument generation model from diverse …
Abstract
Considering diverse aspects of an argumentative issue is an essential step for mitigating a biased opinion and making reasonable decisions. A related generation model can produce flexible results that cover a wide range of topics, compared to the retrieval-based method that may show unstable performance for unseen data. In this paper, we study the problem of generating sentential arguments from multiple perspectives, and propose a neural method to address this problem. Our model, ArgDiver (Argument generation model from diverse perspectives), in a way a conversational system, successfully generates high-quality sentential arguments. At the same time, the automatically generated arguments by our model show a higher diversity than those generated by any other baseline models. We believe that our work provides evidence for the potential of a good generation model in providing diverse perspectives on a controversial topic.
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