Document detail
ID

oai:arXiv.org:2403.20215

Topic
Computer Science - Computation and...
Author
Freihat, Abed Alhakim Khalilia, Hadi Bella, Gábor Giunchiglia, Fausto
Category

Computer Science

Year

2024

listing date

4/3/2024

Keywords
wordnet
Metrics

Abstract

High-quality WordNets are crucial for achieving high-quality results in NLP applications that rely on such resources.

However, the wordnets of most languages suffer from serious issues of correctness and completeness with respect to the words and word meanings they define, such as incorrect lemmas, missing glosses and example sentences, or an inadequate, Western-centric representation of the morphology and the semantics of the language.

Previous efforts have largely focused on increasing lexical coverage while ignoring other qualitative aspects.

In this paper, we focus on the Arabic language and introduce a major revision of the Arabic WordNet that addresses multiple dimensions of lexico-semantic resource quality.

As a result, we updated more than 58% of the synsets of the existing Arabic WordNet by adding missing information and correcting errors.

In order to address issues of language diversity and untranslatability, we also extended the wordnet structure by new elements: phrasets and lexical gaps.

Freihat, Abed Alhakim,Khalilia, Hadi,Bella, Gábor,Giunchiglia, Fausto, 2024, Advancing the Arabic WordNet: Elevating Content Quality

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