2022
DOI: 10.48550/arxiv.2210.03018
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Measuring Fine-Grained Semantic Equivalence with Abstract Meaning Representation

Abstract: Identifying semantically equivalent sentences is important for many cross-lingual and monolingual NLP tasks. Current approaches to semantic equivalence take a loose, sentencelevel approach to "equivalence," despite previous evidence that fine-grained differences and implicit content have an effect on human understanding (Roth and Anthonio, 2021) and system performance (Briakou and Carpuat, 2021). In this work, we introduce a novel, more sensitive method of characterizing semantic equivalence that leverages Abs… Show more

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