SYSTEMATIC LITERATURE REVIEW OF DOCUMENTS SIMILARITY DETECTION IN THE LEGAL FIELD: TREND, IMPLEMENTATION, OPPORTUNITIES AND CHALLENGE USING THE KITCHENHAM METHOD

  • Muhammad Furqan Nazuli School of Electrical Engineering and Informatics, Bandung Institute of Technology, Indonesia
  • Irfan Walhidayah School of Electrical Engineering and Informatics, Bandung Institute of Technology, Indonesia
  • Amany Akhyar School of Electrical Engineering and Informatics, Bandung Institute of Technology, Indonesia
  • Gusti Ayu Putri Saptawati Soekidjo School of Electrical Engineering and Informatics, Bandung Institute of Technology, Indonesia
Keywords: graph mining, similarity detection, systematic literature review, law document

Abstract

This research conducted a Systematic Literature Review (SLR) to observe the application of graph mining techniques in detecting document law similarities. Graph mining, where nodes and edges represent entities and relations respectively, has proven effective in identifying patterns within legal documents. This review encompasses 93 relevant studies published over the past five years. Despite its potential, graph mining in the legal domain faces challenges, such as the complexity of implementation and the necessity for high-quality data. There is a need to better understand how these techniques can be optimized and applied effectively to address these challenges. This SLR utilized a comprehensive approach to identify and analyze trends, implementations, and popular domains related to graph mining in legal documents. The study reviewed trends in the number of studies, categorized the implementations, and evaluated the prevalent techniques employed. The review reveals a growing trend in the use of graph mining techniques, with a noticeable increase in the number of studies year by year. The implementation of these techniques is the most popular category, with applications predominantly in legal domains such as laws, legal documents, and case law. The most frequently used graph mining techniques involve Natural Language Processing (NLP), Information Retrieval, and Deep Learning. Although challenges persist, including complex implementation and the need for quality data, graph mining remains a promising approach for developing future information systems in law.

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Published
2024-10-25
How to Cite
[1]
M. F. Nazuli, I. Walhidayah, A. Akhyar, and G. A. P. Saptawati Soekidjo, “SYSTEMATIC LITERATURE REVIEW OF DOCUMENTS SIMILARITY DETECTION IN THE LEGAL FIELD: TREND, IMPLEMENTATION, OPPORTUNITIES AND CHALLENGE USING THE KITCHENHAM METHOD ”, J. Tek. Inform. (JUTIF), vol. 5, no. 5, pp. 1337-1354, Oct. 2024.