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The Frontiers of Society, Science and Technology, 2024, 6(1); doi: 10.25236/FSST.2024.060130.

Design and Realization of Database System for Judgement Documents Based on Natural Language Processing

Author(s)

Yanqing Fang

Corresponding Author:
Yanqing Fang
Affiliation(s)

School of the English Language and Culture, Xiamen University Tan Kah Kee College, Xiamen, China

Abstract

In this paper, based on natural language processing technology, we designed and realized a database system of judgement instruments. By analyzing and processing the instruments of crimes, we have used natural language processing technology to classify the instruments, extract keywords and extract information, and realize the rapid retrieval and accurate analysis of the instrument database. In the design process, we adopted a reasonable design method for the instrument database system to ensure the stability and scalability of the system. In the realization scheme, we made full use of the existing technical resources and algorithmic models to ensure the efficiency and accuracy of the system. Through this study, we have come to the conclusion that the database system for job-related crime instruments based on natural language processing can effectively improve the processing efficiency and quality of the instruments, and provide strong support for the research and practice in related fields.

Keywords

Natural Language Processing, Named Entity Recognition, Database System

Cite This Paper

Yanqing Fang. Design and Realization of Database System for Judgement Documents Based on Natural Language Processing. The Frontiers of Society, Science and Technology (2024), Vol. 6, Issue 1: 192-200. https://doi.org/10.25236/FSST.2024.060130.

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