Netinfo Security ›› 2024, Vol. 24 ›› Issue (11): 1783-1792.doi: 10.3969/j.issn.1671-1122.2024.11.017

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A Named Entity Recognition Model for Legal Documents

LU Rui1,2(), LI Linying3   

  1. 1. Police Information Department, Liaoning Police College, Dalian 116036, China
    2. Liaoning Provincial Key Laboratory of Public Security Big Data Intelligent Application, Dalian 116036, China
    3. School of Software Engineering, Dalian University of Foreign, Dalian 116044, China
  • Received:2024-07-04 Online:2024-11-10 Published:2024-11-21

Abstract:

Accurate identification of entities in legal documents is fundamental for building an intelligent judicial system. However, generic Named Entity Recognition models often struggle with accurately recognizing entity boundaries in legal documents and integrating recognition results closely with legal practices. To improve the accuracy of entity recognition in legal documents, this paper proposed the BBAG-NER model for Named Entity Recognition in legal documents. The model first encoded character sequences using BERT, then employed Bidirectional Long Short-Term Memory and Attention mechanisms to assign different weights and enhance the ability to delineate entity boundaries. Finally, it used a global pointer network to identify potential judicial entity segments and obtained the final entity categories through an entity classifier. Experimental results on a legal document corpus dataset show that our proposed model achieves an F1 score of 89.18%, representing a 2.1% improvement compared to the BERT-CRF model, demonstrating the overall effectiveness of our proposed model.

Key words: legal documents, named entity recognition, global pointer network, BiLSTM

CLC Number: