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The Large Language Model GreekLegalRoBERTa

Vasileios Saketos, Despina-Athanasia Pantazi, Manolis Koubarakis

TL;DR

Four versions of GreekLegalRoBERTa are developed, which are four large language models trained on Greek legal and nonlegal text that surpass the performance of GreekLegalBERT, Greek- LegalBERT-v2, and GreekBERT in two tasks involving Greek legal documents: named entity recognition and multi-class legal topic classification.

Abstract

We develop four versions of GreekLegalRoBERTa, which are four large language models trained on Greek legal and nonlegal text. We show that our models surpass the performance of GreekLegalBERT, Greek- LegalBERT-v2, and GreekBERT in two tasks involving Greek legal documents: named entity recognition and multi-class legal topic classification. We view our work as a contribution to the study of domain-specific NLP tasks in low-resource languages, like Greek, using modern NLP techniques and methodologies.

The Large Language Model GreekLegalRoBERTa

TL;DR

Four versions of GreekLegalRoBERTa are developed, which are four large language models trained on Greek legal and nonlegal text that surpass the performance of GreekLegalBERT, Greek- LegalBERT-v2, and GreekBERT in two tasks involving Greek legal documents: named entity recognition and multi-class legal topic classification.

Abstract

We develop four versions of GreekLegalRoBERTa, which are four large language models trained on Greek legal and nonlegal text. We show that our models surpass the performance of GreekLegalBERT, Greek- LegalBERT-v2, and GreekBERT in two tasks involving Greek legal documents: named entity recognition and multi-class legal topic classification. We view our work as a contribution to the study of domain-specific NLP tasks in low-resource languages, like Greek, using modern NLP techniques and methodologies.

Paper Structure

This paper contains 10 sections, 5 tables.