Title of article :
Relation Extraction Based on Fusion Dependency Parsing from Chinese EMRs
Author/Authors :
Zhai,Pengjun Department of Computer Science and Technology - Tongji University, China , Huang, Xin Department of Computer Science and Technology - Tongji University, China , Zhang,Beibei Department of Computer Science and Technology - Tongji University, China , Fang, Yu Department of Computer Science and Technology - Tongji University, China
Pages :
9
From page :
1
To page :
9
Abstract :
The Electronic Medical Record (EMR) contains a great deal of medical knowledge related to patients, which has been widely used in the construction of medical knowledge graphs. Previous studies mainly focus on the features based on surface semantics of EMRs for relation extraction, such as contextual feature, but the features of sentence structure in Chinese EMRs have been neglected. In this paper, a fusion dependency parsing-based relation extraction method is proposed. Specifically, this paper extends basic features with medical record feature and indicator feature that are applicable to Chinese EMRs. Furthermore, dependency syntactic features are introduced to analyse the dependency structure of sentences. Finally, the F1 value of relation extraction based on extended features is 4.87% higher than that of relation extraction based on basic features. an‎d compared with the former, the F1 value of relation extraction based on fusion dependency parsing is increased by 4.39%. The results of experiments performed on a Chinese EMR data set show that the extended features and dependency parsing all contribute to the relation extraction.
Keywords :
Relation Extraction , Fusion Dependency Parsing , Chinese EMRs
Journal title :
Scientific Programming
Serial Year :
2020
Full Text URL :
Record number :
2610955
Link To Document :
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