Effect Graph: Effect Relation Extraction for Explanation Generation
Publication date
2023-06-13
Editors
Dalvi Mishra, Bhavana
Durrett, Greg
Jansen, Peter
Neves Ribeiro, Danilo
Wei, Jason
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Part of book
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Abstract
Argumentation is an important means of communication. For describing especially arguments about consequences, the notion of effect relations has been introduced recently. We propose a method to extract effect relations from large text resources and apply it on encyclopedic and argumentative texts. By connecting the extracted relations, we generate a knowledge graph which we call effect graph. For evaluating the effect graph, we perform crowd and expert annotations and create a novel dataset. We demonstrate a possible use case of the effect graph by proposing a method for explaining arguments from consequences.
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Citation
Karnstedt-Hulpus, I, Kobbe, J & Stuckenschmidt, H 2023, Effect Graph: Effect Relation Extraction for Explanation Generation. in B Dalvi Mishra, G Durrett, P Jansen, D Neves Ribeiro & J Wei (eds), Proceedings of the 1st Workshop on Natural Language Reasoning and Structured Explanations (NLRSE). Association for Computational Linguistics, Toronto, pp. 116-127. https://doi.org/10.18653/v1/2023.nlrse-1.9