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Unsupervised and supervised text similarity systems for automated identification of national implementing measures of European directives

Authors :
Marco Gerbaudo
Francesco Costamagna
Rohan Nanda
Guido Boella
Giovanni Siragusa
Luigi Di Caro
Lorenzo Grossio
Nanda, R
Siragusa, G
Di Caro, L
Boella, G
Grossio, L
Gerbaudo, M
Costamagna, F
Source :
Artif. Intell. Law, 27(2), 199-225, Artificial Intelligence and Law
Publication Year :
2018
Publisher :
Springer Science and Business Media LLC, 2018.

Abstract

The automated identification of national implementations (NIMs) of European directives by text similarity techniques has shown promising preliminary results. Previous works have proposed and utilized unsupervised lexical and semantic similarity techniques based on vector space models, latent semantic analysis and topic models. However, these techniques were evaluated on a small multilingual corpus of directives and NIMs. In this paper, we utilize word and paragraph embedding models learned by shallow neural networks from a multilingual legal corpus of European directives and national legislation (from Ireland, Luxembourg and Italy) to develop unsupervised semantic similarity systems to identify transpositions. We evaluate these models and compare their results with the previous unsupervised methods on a multilingual test corpus of 43 Directives and their corresponding NIMs. We also develop supervised machine learning models to identify transpositions and compare their performance with different feature sets.

Details

ISSN :
15728382 and 09248463
Volume :
27
Database :
OpenAIRE
Journal :
Artificial Intelligence and Law
Accession number :
edsair.doi.dedup.....c761f3a4530fc70e280995d8c6183c47
Full Text :
https://doi.org/10.1007/s10506-018-9236-y