Effect Graph: Effect Relation Extraction for Explanation Generation

Publication date

2023-06-13

Authors

HulpuÈ™, IoanaISNI 0000000523924270
Kobbe, Jonathan
Stuckenschmidt, Heiner

Editors

Dalvi Mishra, Bhavana
Durrett, Greg
Jansen, Peter
Neves Ribeiro, Danilo
Wei, Jason

Advisors

Supervisors

Document Type

Part of book
Open Access logo

License

cc_by

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.

Keywords

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