More Data, More Relations, More Context and More Openness: A Review and Outlook for Relation Extraction

Resource type
Conference Paper
Authors/contributors
Title
More Data, More Relations, More Context and More Openness: A Review and Outlook for Relation Extraction
Abstract
Relational facts are an important component of human knowledge, which are hidden in vast amounts of text. In order to extract these facts from text, people have been working on relation extraction (RE) for years. From early pattern matching to current neural networks, existing RE methods have achieved significant progress. Yet with explosion of Web text and emergence of new relations, human knowledge is increasing drastically, and we thus require “more” from RE: a more powerful RE system that can robustly utilize more data, efficiently learn more relations, easily handle more complicated context, and flexibly generalize to more open domains. In this paper, we look back at existing RE methods, analyze key challenges we are facing nowadays, and show promising directions towards more powerful RE. We hope our view can advance this field and inspire more efforts in the community.
Date
2020-12
Proceedings Title
Proceedings of the 1st Conference of the Asia-Pacific Chapter of the Association for Computational Linguistics and the 10th International Joint Conference on Natural Language Processing
Conference Name
AACL 2020
Place
Suzhou, China
Publisher
Association for Computational Linguistics
Pages
745–758
Short Title
More Data, More Relations, More Context and More Openness
Accessed
24/02/2024, 17:40
Library Catalogue
ACLWeb
Citation
Han, X., Gao, T., Lin, Y., Peng, H., Yang, Y., Xiao, C., Liu, Z., Li, P., Zhou, J., & Sun, M. (2020). More Data, More Relations, More Context and More Openness: A Review and Outlook for Relation Extraction. In K.-F. Wong, K. Knight, & H. Wu (Eds.), Proceedings of the 1st Conference of the Asia-Pacific Chapter of the Association for Computational Linguistics and the 10th International Joint Conference on Natural Language Processing (pp. 745–758). Association for Computational Linguistics. https://aclanthology.org/2020.aacl-main.75