This paper presents a cross-lingual methodology for analyzing verbal argument structures to uncover shared syntax-semantic patterns among verbal complements across languages. The primary contribution is a novel semantic model for encoding verbal arguments in multiple languages. The methodology is rooted in the k-Multilingual Concept (MCk) model, a state-of-the-art automated system designed for retrieving and aligning semantically-equivalent lexical items across k different languages. We integratedWordNet, BabelNet, and VerbNet into a framework that accommodates the unique demands of verbal context. The methodology is implemented in a highly-scalable pipeline, creating VerbAligNet, a new resource that encodes over 6k verbal arguments for 600+ verb senses, showcasing prevalent usage patterns across 9 valency frames on three languages. The evaluation demonstrates its accuracy in extracting semantically-equivalent verbal arguments for diverse verbs.

VerbAligNet: Unlocking Multilingual Exploration of Verbal Arguments

Francesca Grasso
First
;
Vladimiro Lovera Rulfi;Luigi Di Caro
2024-01-01

Abstract

This paper presents a cross-lingual methodology for analyzing verbal argument structures to uncover shared syntax-semantic patterns among verbal complements across languages. The primary contribution is a novel semantic model for encoding verbal arguments in multiple languages. The methodology is rooted in the k-Multilingual Concept (MCk) model, a state-of-the-art automated system designed for retrieving and aligning semantically-equivalent lexical items across k different languages. We integratedWordNet, BabelNet, and VerbNet into a framework that accommodates the unique demands of verbal context. The methodology is implemented in a highly-scalable pipeline, creating VerbAligNet, a new resource that encodes over 6k verbal arguments for 600+ verb senses, showcasing prevalent usage patterns across 9 valency frames on three languages. The evaluation demonstrates its accuracy in extracting semantically-equivalent verbal arguments for diverse verbs.
2024
International Conference on Metadata and Semantics Research
Milan
23-27 October 2023
Metadata and Semantics Research
SPRINGER
3
17
978-3-031-65989-8
Francesca Grasso, Vladimiro Lovera Rulfi, Luigi Di Caro
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/1948925
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