PyEuroVoc: A Tool for Multilingual Legal Document Classification with EuroVoc Descriptors

Andrei-Marius Avram, V. Pais, D. Tufis
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引用次数: 7

Abstract

EuroVoc is a multilingual thesaurus that was built for organizing the legislative documentary of the European Union institutions. It contains thousands of categories at different levels of specificity and its descriptors are targeted by legal texts in almost thirty languages. In this work we propose a unified framework for EuroVoc classification on 22 languages by fine-tuning modern Transformer-based pretrained language models. We study extensively the performance of our trained models and show that they significantly improve the results obtained by a similar tool - JEX - on the same dataset. The code and the fine-tuned models were open sourced, together with a programmatic interface that eases the process of loading the weights of a trained model and of classifying a new document.
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PyEuroVoc:一个多语言法律文件分类工具,带有EuroVoc描述符
EuroVoc是一个多语言词典,是为组织欧盟机构的立法文献而建立的。它包含数千种不同层次的具体类别,其描述符被近30种语言的法律文本所针对。在这项工作中,我们通过微调现代基于transformer的预训练语言模型,为22种语言的EuroVoc分类提出了一个统一的框架。我们广泛地研究了我们训练的模型的性能,并表明它们显着改善了类似工具- JEX -在相同数据集上获得的结果。代码和微调模型都是开源的,还有一个编程接口,可以简化加载训练模型的权重和对新文档进行分类的过程。
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