An Information Retrieval Pipeline for Legislative Documents from the Brazilian Chamber of Deputies

Author:

Souza Ellen12,Vitório Douglas13,Moriyama Gyovana2,Santos Luiz2,Martins Lucas2,Souza Mariana2,Fonseca Márcio4,Félix Nádia25,Carvalho André C.P.L.F.2,Albuquerque Hidelberg O.13,Oliveira Adriano L.I.3

Affiliation:

1. MiningBR Research Group, Federal Rural University of Pernambuco, Brazil

2. Institute of Mathematics and Computer Sciences, University of São Paulo, Brazil

3. Centro de Informática, Federal University of Pernambuco, Brazil

4. Chamber of Deputies, Brasilia, Brazil

5. Institute of Informatics, Federal University of Goiás, Brazil

Abstract

This work investigates information retrieval methods to address the existing difficulties on the Preliminary Search, part of the law making process from the Brazilian Chamber of Deputies. For such, different preprocessing approaches, stemmers, language models, and BM25 variants were compared. Two legislative corpora from Chamber were used to build and validate the pipeline. All texts were converted to lowercase and had stopwords, accentuation, and punctuation removed. Words were represented by their stem combined with word unigram and bigram language models. Retrieving the bill that was originated from a specific job request, the BM25L with Savoy stemmer reached a R@20 of 0.7356. After removing queries with inconsistencies or which made reference exclusively to attachments, to other job requests, or to bills, the R@20 increased to 0.94.

Publisher

IOS Press

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1. Building a relevance feedback corpus for legal information retrieval in the real-case scenario of the Brazilian Chamber of Deputies;Language Resources and Evaluation;2024-08-18

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3. Integrating legal event and context information for Chinese similar case analysis;Artificial Intelligence and Law;2023-10-25

4. Research and Development Agenda for the Use of AI in Parliaments;Proceedings of the 24th Annual International Conference on Digital Government Research;2023-07-11

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