Research on entity relation extraction for Chinese medical text

Author:

Lu Yonghe1,Chen Hongyu2ORCID,Zhang Yueyun2ORCID,Peng Jiahui2,Xiang Dingcheng3,Zhang Jinxia3

Affiliation:

1. School of Artificial Intelligence, Sun Yat-sen University, Zhuhai, China

2. School of Information Management, Sun Yat-sen University, Guangzhou, China

3. Department of Cardiology, General Hospital of Southern Theatre Command of PLA, Guangzhou, China

Abstract

Currently, the primary challenges in entity relation extraction are the existence of overlapping relations and cascading errors. In addressing these issues, both CasRel and TPLinker have demonstrated their competitiveness. This study aims to explore the application of these two models in the context of entity relation extraction from Chinese medical text. We evaluate the performance of these models using the publicly available dataset CMeIE and further enhance their capabilities through the incorporation of pre-trained models that are tailored to the specific characteristics of the text. The experimental findings demonstrate that the TPLinker model exhibits a heightened and consistent boosting effect compared to CasRel, while also attaining superior performance through the utilization of advanced pre-trained models. Notably, the MacBERT + TPLinker combination emerges as the optimal choice, surpassing the benchmark model by 12.45% and outperforming the leading model ERNIE-Health 3.0 in the CBLUE challenge by 2.31%.

Funder

Basic Project of the Science and Technology Program of Guangzhou

Publisher

SAGE Publications

Reference46 articles.

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