Combining WordNet and Word Embeddings in Data Augmentation for Legal Texts
Dec 1, 2022·,,,,,,·
1 min read
Sezen Perçin
Andrea Galassi
Francesca Lagioia
Federico Ruggeri
Piera Santin
Giovanni Sartor
Paolo Torroni
Abstract
Creating balanced labeled textual corpora for complex tasks, like legal analysis, is a challenging and expensive process that often requires the collaboration of domain experts.To address this problem, we propose a data augmentation method based on the combination of GloVe word embeddings and the WordNet ontology.We present an example of application in the legal domain, specifically on decisions of the Court of Justice of the European Union.Our evaluation with human experts confirms that our method is more robust than the alternatives.
Type
Publication
Proceedings of the Natural Legal Language Processing Workshop 2022
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