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Main Authors: Gregório, Fabio, Castro, Rafaela, Belloze, Kele, Lopes, Rui Pedro, Bezerra, Eduardo
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2409.15348
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author Gregório, Fabio
Castro, Rafaela
Belloze, Kele
Lopes, Rui Pedro
Bezerra, Eduardo
author_facet Gregório, Fabio
Castro, Rafaela
Belloze, Kele
Lopes, Rui Pedro
Bezerra, Eduardo
contents The Brazilian Constitution, known as the Citizen's Charter, provides mechanisms for citizens to petition the Judiciary, including the so-called special appeal. This specific type of appeal aims to standardize the legal interpretation of Brazilian legislation in cases where the decision contradicts federal laws. The handling of special appeals is a daily task in the Judiciary, regularly presenting significant demands in its courts. We propose a new method called GLARE, based on unsupervised machine learning, to help the legal analyst classify a special appeal on a topic from a list made available by the National Court of Brazil (STJ). As part of this method, we propose a modification of the graph-based LexRank algorithm, which we call Guided LexRank. This algorithm generates the summary of a special appeal. The degree of similarity between the generated summary and different topics is evaluated using the BM25 algorithm. As a result, the method presents a ranking of themes most appropriate to the analyzed special appeal. The proposed method does not require prior labeling of the text to be evaluated and eliminates the need for large volumes of data to train a model. We evaluate the effectiveness of the method by applying it to a special appeal corpus previously classified by human experts.
format Preprint
id arxiv_https___arxiv_org_abs_2409_15348
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle GLARE: Guided LexRank for Advanced Retrieval in Legal Analysis
Gregório, Fabio
Castro, Rafaela
Belloze, Kele
Lopes, Rui Pedro
Bezerra, Eduardo
Information Retrieval
Machine Learning
The Brazilian Constitution, known as the Citizen's Charter, provides mechanisms for citizens to petition the Judiciary, including the so-called special appeal. This specific type of appeal aims to standardize the legal interpretation of Brazilian legislation in cases where the decision contradicts federal laws. The handling of special appeals is a daily task in the Judiciary, regularly presenting significant demands in its courts. We propose a new method called GLARE, based on unsupervised machine learning, to help the legal analyst classify a special appeal on a topic from a list made available by the National Court of Brazil (STJ). As part of this method, we propose a modification of the graph-based LexRank algorithm, which we call Guided LexRank. This algorithm generates the summary of a special appeal. The degree of similarity between the generated summary and different topics is evaluated using the BM25 algorithm. As a result, the method presents a ranking of themes most appropriate to the analyzed special appeal. The proposed method does not require prior labeling of the text to be evaluated and eliminates the need for large volumes of data to train a model. We evaluate the effectiveness of the method by applying it to a special appeal corpus previously classified by human experts.
title GLARE: Guided LexRank for Advanced Retrieval in Legal Analysis
topic Information Retrieval
Machine Learning
url https://arxiv.org/abs/2409.15348