Abstract

Joint extraction from unstructured text aims to extract relational triples composed of entity pairs and their relations. However, most existing works fail to process the overlapping issues that occur when the same entities are utilized to generate different relational triples in a sentence. In this work, we propose a mutually exclusive Binary Cross Tagging (BCT) scheme and develop the end-to-end BCT framework to jointly extract overlapping entities and triples. Each token of entities is assigned a mutually exclusive binary tag, and then these tags are cross-matched in all tag sequences to form triples. Our method is compared with other state-of-the-art models in two English public datasets and a large-scale Chinese dataset. Experiments show that our proposed framework achieves encouraging performance in F1 scores for the three datasets investigated. Further detailed analysis demonstrates that our method achieves strong performance overall with three overlapping patterns, especially when the overlapping problem becomes complex.

Highlights

  • Relation extraction (RE) from natural language texts is widely studied in information extraction (IE)

  • Experiments on the three public datasets show that the end-to-end Binary Cross Tagging (BCT) framework achieves encouraging performance and consistent improvements in F1 score, obtained by effectively handling the overlapping issue through the mutually exclusive binary cross tagging scheme

  • Our BCTBERT framework achieves encouraging F1 scores in NYT, WebNLG, and DuIE datasets of 89.1%, 91.3%, and 80.4% respectively

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Summary

Introduction

Relation extraction (RE) from natural language texts is widely studied in information extraction (IE). RE aims to detect specific types of entities from unstructured text and the semantic relations between entity pairs. It is the basis and data source for building knowledge bases (KBs) such as YAGO [1], Freebase [2], DBpedia [3] and NELL [4]. The joint extracting methods include feature-based models [8,9,10,11] and neural network models [12,13,14,15], and are able to extract and leverage the deep associations between entities and relations at the same

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