PROBLEM OF SUPPLY IN COMPUTER LINGUISTICS AND LINGUISTIC SUPPLY OF SYNONYMOUS UNITS

  • Nilufar SOTVOLDIYEVA O‘zbekiston Milliy universiteti magistranti
Keywords: Computer Linguistics, Computational Linguistics, Natural Language Processing (NLP), Synonymy, Synonymous Units, Linguistic Resources, Data Sparsity, Cross-lingual Analysis, Quality Control

Abstract

Computer linguistics, a dynamic field at the intersection of linguistics and computer science, plays a crucial role in natural language processing (NLP) applications such as machine translation, sentiment analysis, and speech recognition. One of the fundamental challenges in computer linguistics is the problem of supply, specifically the availability and accessibility of linguistic resources. This article explores the problem of supply in computer linguistics, with a focus on the linguistic supply of synonymous units. We discuss the significance of linguistic resources, the challenges of synonymy, and the potential solutions to bridge the gap between linguistic supply and computational demand.

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Published
2024-01-31
How to Cite
Nilufar SOTVOLDIYEVA. (2024). PROBLEM OF SUPPLY IN COMPUTER LINGUISTICS AND LINGUISTIC SUPPLY OF SYNONYMOUS UNITS. News of the NUUz, 1(1.1.1), 310-313. https://doi.org/10.69617/uzmu.v1i1.1.1.803