[en] This paper presents an AI use-case developed in the project “Study on legislation in the era of artificial intelligence and digitization” promoted by the EU Commission Directorate-General for Informatics. We propose a hybrid technical framework where AI techniques, Data Analytics, Semantic Web approaches and LegalXML modelisation produce benefits in legal drafting activity. This paper aims to classify the corrigenda of the EU legislation with the goal to detect some criteria that could prevent errors during the drafting or during the publication process. We use a pipeline of different techniques combining AI, NLP, Data Analytics, Semantic annotation and LegalXML instruments for enriching the non-symbolic AI tools with legal knowledge interpretation to offer to the legal experts.
Disciplines :
Sciences informatiques
Auteur, co-auteur :
Palmirani, Monica
Sovrano, Francesco
LIGA, Davide ; University of Luxembourg > Faculty of Science, Technology and Medecine (FSTM)
Sapienza, Salvatore
Vitali, Fabio
Co-auteurs externes :
yes
Langue du document :
Anglais
Titre :
Hybrid AI Framework for Legal Analysis of the EU Legislation Corrigenda
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