verBERT: Automating Brazilian Case Law Document Multi-label Categorization Using BERT
Abstract
In this work, we carried out a study about the use of attention-based algorithms to automate the categorization of Brazilian case law documents. We used data from the Kollemata Project to produce two distinct datasets with adequate class systems. Then, we implemented a multi-class and multi-label version of BERT and fine-tuned different BERT models with the produced datasets. We evaluated several metrics, adopting the micro-averaged F1-Score as our main metric for which we obtained a performance value of F1-micro=0.72 corresponding to gains of 30 percent points over the tested statistical baseline. In this work, we carried out a study about the use of attention-based algorithms to automate the categorization of Brazilian case law documents. We used data from the \textit{Kollemata} Project to produce two distinct datasets with adequate class systems. Then, we implemented a multi-class and multi-label version of BERT and fine-tuned different BERT models with the produced datasets. We evaluated several metrics, adopting the micro-averaged F1-Score as our main metric for which we obtained a performance value of corresponding to gains of 30 percent points over the tested statistical baseline.
Keywords
Cite
@article{arxiv.2203.06224,
title = {verBERT: Automating Brazilian Case Law Document Multi-label Categorization Using BERT},
author = {Felipe R. Serras and Marcelo Finger},
journal= {arXiv preprint arXiv:2203.06224},
year = {2022}
}
Comments
10 pages, 2 tables