Izvorni znanstveni članak
https://doi.org/10.21860/j.15.2.12
Scaling Up: Analyzing Classification Outcomes in Large Korean Legal Document Datasets
Ye-Chan Park
; Department of Artificial Intelligence, Chung-Ang University, Seoul, Republic of Korea
Hanyong Lee
; Department of Artificial Intelligence, Chung-Ang University, Seoul, Republic of Korea
Jaesung Lee
; Department of Artificial Intelligence, Chung-Ang University, Seoul, Republic of Korea
Sažetak
This paper proposes an integrated approach that combines artificial intelligence models for automatic classification and prediction of Korean legal judgments. Given the complexity of the Korean legal system and the diversity of its legal issues, this study utilizes a transformer- based model to classify and predict legal judgment documents. By leveraging these models, this study addresses the challenges posed by the intricate legal language and diverse topics within Korean legal documents, significantly improving the efficiency and accuracy of classification tasks. The proposed approach enhances the automation and reliability of legal document predictions, demonstrating exceptional performance in managing the complexities of legal language. Specifically, the models facilitate a deeper understanding of the context of Korean legal judgments, thereby increasing the reliability of prediction outcomes. Moreover, this study introduces a novel integrated framework that significantly enhances the performance of automated legal document processing and prediction systems. This framework supports legal consultations, document management, and automated judgment systems, representing a significant advancement in the application of artificial intelligence in the legal domain.
Ključne riječi
Legal Case Classification; Legal Analysis; Transformer Model; Legal Text Processing
Hrčak ID:
329684
URI
Datum izdavanja:
31.3.2025.
Posjeta: 772 *