TITLE:
An End-to-End Method for Joint Extraction of Tibetan Entity Relations
AUTHORS:
Yuan Sun, Sisi Liu, Tianci Xia, Xiaobing Zhao
KEYWORDS:
End-to-End Model, Tibetan Entity Relation, Joint Method, Character-Level Processing
JOURNAL NAME:
Journal of Computer and Communications,
Vol.9 No.9,
September
30,
2021
ABSTRACT:
Entity relation extraction is to find entities and relations from unstructured texts, which is beneficial to the applications of knowledge graphs and question answering systems. The traditional methods handle this task in a pipelined manner which extracts the entities first and then recognizes their relations. This framework may lead to error delivery. In order to tackle this problem, this paper proposes an end-to-end method for joint extraction of Tibetan entity relations which can extract entities and relations at the same time. According to the Tibetan spelling characteristics, this paper processes the Tibetan corpus by word-level and character-level respectively. Combined with part of speech tagging, we use the end-to-end model to convert the entity relation extraction task to the tagging problem. Finally, the experimental results show that the proposed method is better than the baseline.