Title: A method of constructing knowledge graph for government procurement system

Authors: Xiaochuan Zhang; Lu Liu

Addresses: Chongqing University of Technology, Liangjiang New District, Chongqing, China ' Chongqing University of Technology, Liangjiang New District, Chongqing, China

Abstract: Knowledge graph can build a bridge between data and knowledge. Aiming at the problems of weak relevance and lack of knowledge of relevant business data generated by the operation of government procurement system for many years, resulting in difficult information sharing, slow service response and poor user experience, this paper proposes a knowledge graph construction method combining top-down method and bottom-up method. For the knowledge extraction model, this paper adopts a pipeline model which is different from the popular joint extraction model. Firstly, BiGRU-CRF is used to obtain the entities; secondly, the relational classification model BiGRU-Attention establishes the relationship between entities, even to form the minimum unit of knowledge graph. Finally, using our model, we achieve average F1 of 83.2 without using too much computing power. Our model can effectively construct a knowledge graph and improve the service quality in the system.

Keywords: natural language processing; knowledge graph; knowledge extraction; government procurement.

DOI: 10.1504/IJWMC.2021.121624

International Journal of Wireless and Mobile Computing, 2021 Vol.21 No.4, pp.332 - 341

Received: 10 Oct 2021
Accepted: 02 Jan 2022

Published online: 21 Mar 2022 *

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