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Applying BERT Embeddings to Predict Legal Textual Entailment

Sabine Wehnert, Shipra Dureja, Libin Kutty, Viju Sudhi, Ernesto William De Luca

2022The Review of Socionetwork Strategies14 citationsDOIOpen Access PDF

Abstract

Abstract Textual entailment classification is one of the hardest tasks for the Natural Language Processing community. In particular, working on entailment with legal statutes comes with an increased difficulty, for example in terms of different abstraction levels, terminology and required domain knowledge to solve this task. In course of the COLIEE competition, we develop three approaches to classify entailment. The first approach combines Sentence-BERT embeddings with a graph neural network, while the second approach uses the domain-specific model LEGAL-BERT, further trained on the competition’s retrieval task and fine-tuned for entailment classification. The third approach involves embedding syntactic parse trees with the KERMIT encoder and using them with a BERT model. In this work, we discuss the potential of the latter technique and why of all our submissions, the LEGAL-BERT runs may have outperformed the graph-based approach.

Topics & Concepts

Computer scienceTextual entailmentNatural language processingLogical consequenceArtificial intelligenceSentenceParsingTask (project management)EmbeddingEncoderManagementEconomicsOperating systemNatural Language Processing TechniquesTopic ModelingArtificial Intelligence in Law
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