Sharing high-quality language resources in the legal domain to develop neural machine translation for under-resourced European languages

Autor: Bago, Petra, Castilho, Sheila, Celeste, Edoardo, Dunne, Jane, Gaspari, Federico, Gíslason, Níels Rúnar, Kåsen, Andre, Klubička, Filip, Kristmannsson, Gauti, McHugh, Helen, Moran, Róisín, Ní Loinsigh, Órla, Olsen, Jon Arild, Parra Escartín, Carla, Ramesh, Akshai, Resende, Natalia, Sheridan, Páraic, Way, Andy
Přispěvatelé: Bago, Petra, Castilho, Sheila, Celeste, Edoardo, Dunne, Jane, Gaspari, Federico, Rúnar Gíslason, Níel, Kåsen, Andre, Klubička, Filip, Kristmannsson, Gauti, Mchugh, Helen, Moran, Róisín, Ní Loinsigh, Órla, Arild Olsen, Jon, Parra Escartín, Carla, Ramesh, Akshai, Resende, Natalia, Sheridan, Páraic, Way, Andy
Jazyk: angličtina
Rok vydání: 2022
Předmět:
Zdroj: Bago, Petra, Castilho, Sheila ORCID: 0000-0002-8416-6555 , Celeste, Edoardo ORCID: 0000-0003-1984-4142 , Dunne, Jane, Gaspari, Federico ORCID: 0000-0003-3808-8418 , Gíslason, Niels, Kåsen, Andre, Klubička, Filip, Kristmannsson, Gauti, McHugh, Helen, Moran, Roisin, Ní Loinsigh, Orla, Olsen, Jon, Parra Escartín, Carla ORCID: 0000-0002-8412-1525 , Ramesh, Akshai, Resende, Natália ORCID: 0000-0002-5248-2457 , Sheridan, Paraic and Way, Andy ORCID: 0000-0001-5736-5930 (2022) Sharing high-quality language resources in the legal domain to develop neural machine translation for under-resourced European languages. Revista de Llengua i Dret (Journal of Language and Law), 78 . pp. 9-34. ISSN 2013-1453
Popis: This article reports some of the main achievements of the European Union-funded PRINCIPLE project in collecting high-quality language resources (LRs) in the legal domain for four under-resourced European languages: Croatian, Irish, Norwegian, and Icelandic. After illustrating the significance of this work for developing translation technologies in the context of the European Union and the European Economic Area, the article outlines the main steps of data collection, curation, and sharing of the LRs gathered with the support of public and private data contributors. This is followed by a description of the development pipeline and key features of the state-of-the-art, bespoke neural machine translation (MT) engines for the legal domain that were built using this data. The MT systems were evaluated with a combination of automatic and human methods to validate the quality of the LRs collected in the project, and the high-quality LRs were subsequently shared with the wider community via the ELRC-SHARE repository. The main challenges encountered in this work are discussed, emphasising the importance and the key benefits of sharing high-quality digital LRs. Petra;Sheila;Edoardo;Jane;Federico;Níels ;Andre;Filip;Gauti;Helen;Róisín;Órla ;Jon;Carla ;Akshai;Natalia;Páraic;Andy Way
Databáze: OpenAIRE