In this paper, we present an entity-centric infrastructure to manage legal documents, especially court judgments, based on the organization of a textual document repository and on the annotation of these documents to serve a variety of downstream tasks. Documents are pre-processed and then iteratively annotated using a set of NLP services that combine complementary approaches based on machine learning and syntactic rules. We present a framework that has been designed to be developed and maintained in a sustainable way, allowing for multiple services and uses of the annotated document repository and considering the scarcity of annotated data as an intrinsic challenge for its development. The design activity is the result of a cooperative project where a scientific team, institutional bodies, and companies appointed to implement the final system are involved in co-design activities. We describe experiments to demonstrate the feasibility of the solution and discuss the main challenges to scaling the system at a national level. In particular, we report the results we obtained in annotating data with different low-resource methods and with solutions designed to combine these approaches in a meaningful way. An essential aspect of the proposed solution is a human-in-the-loop approach to control the output of the annotation algorithms in agreement with the organizational processes in place in Italian courts. Based on these results we advocate for the feasibility of the proposed approach and discuss the challenges that must be addressed to ensure the scalability and robustness of the proposed solution.

Bellandi, V., Bernasconi, C., Lodi, F., Palmonari, M., Pozzi, R., Ripamonti, M., et al. (2024). An entity-centric approach to manage court judgments based on Natural Language Processing. COMPUTER LAW & SECURITY REPORT, 52(April 2024) [10.1016/j.clsr.2023.105904].

An entity-centric approach to manage court judgments based on Natural Language Processing

Palmonari, M;Pozzi, R
;
Ripamonti, M;
2024

Abstract

In this paper, we present an entity-centric infrastructure to manage legal documents, especially court judgments, based on the organization of a textual document repository and on the annotation of these documents to serve a variety of downstream tasks. Documents are pre-processed and then iteratively annotated using a set of NLP services that combine complementary approaches based on machine learning and syntactic rules. We present a framework that has been designed to be developed and maintained in a sustainable way, allowing for multiple services and uses of the annotated document repository and considering the scarcity of annotated data as an intrinsic challenge for its development. The design activity is the result of a cooperative project where a scientific team, institutional bodies, and companies appointed to implement the final system are involved in co-design activities. We describe experiments to demonstrate the feasibility of the solution and discuss the main challenges to scaling the system at a national level. In particular, we report the results we obtained in annotating data with different low-resource methods and with solutions designed to combine these approaches in a meaningful way. An essential aspect of the proposed solution is a human-in-the-loop approach to control the output of the annotation algorithms in agreement with the organizational processes in place in Italian courts. Based on these results we advocate for the feasibility of the proposed approach and discuss the challenges that must be addressed to ensure the scalability and robustness of the proposed solution.
Articolo in rivista - Articolo scientifico
Legal knowledge extraction; Named Entity Recognition; Semantic search; Zero-shot learning;
English
31-ott-2023
2024
52
April 2024
105904
embargoed_20241031
Bellandi, V., Bernasconi, C., Lodi, F., Palmonari, M., Pozzi, R., Ripamonti, M., et al. (2024). An entity-centric approach to manage court judgments based on Natural Language Processing. COMPUTER LAW & SECURITY REPORT, 52(April 2024) [10.1016/j.clsr.2023.105904].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/462564
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