4.4 Article

Legal document recommendation system: A cluster based pairwise similarity computation

Journal

JOURNAL OF INTELLIGENT & FUZZY SYSTEMS
Volume 41, Issue 5, Pages 5497-5509

Publisher

IOS PRESS
DOI: 10.3233/JIFS-189871

Keywords

Legal document recommender systems; Pairwise similarity; Graph Clustering; Semantic similarity

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This study proposes a novel Legal Document Recommendation System based on graph clustering, which efficiently handles a large number of judgments and finds semantically relevant judgments. By restricting the scope of pairwise similarity calculations, the system significantly reduces the computational complexity and improves the efficiency of the recommender system.
Legal practitioners analyze relevant previous judgments to prepare favorable and advantageous arguments for an ongoing case. In Legal domain, recommender systems (RS) effectively identify and recommend referentially and/or semantically relevant judgments. Due to the availability of enormous amounts of judgments, RS needs to compute pairwise similarity scores for all unique judgment pairs in advance, aiming to minimize the recommendation response time. This practice introduces the scalability issue as the number of pairs to be computed increases quadratically with the number of judgments i.e., O (n(2)). However, there is a limited number of pairs consisting of strong relevance among the judgments. Therefore, it is insignificant to compute similarities for pairs consisting of trivial relevance between judgments. To address the scalability issue, this research proposes a graph clustering based novel Legal Document Recommendation System (LDRS) that forms clusters of referentially similar judgments and within those clusters find semantically relevant judgments. Hence, pairwise similarity scores are computed for each cluster to restrict search space within-cluster only instead of the entire corpus. Thus, the proposed LDRS severely reduces the number of similarity computations that enable large numbers of judgments to be handled. It exploits a highly scalable Louvain approach to cluster judgment citation network, and Doc2Vec to capture the semantic relevance among judgments within a cluster. The efficacy and efficiency of the proposed LDRS are evaluated and analyzed using the large real-life judgments of the Supreme Court of India. The experimental results demonstrate the encouraging performance of proposed LDRS in terms of Accuracy, F1-Scores, MCC Scores, and computational complexity, which validates the applicability for scalable recommender systems.

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