CORPUS ANALYSIS OF SPEECH UNITS IN SOCIAL NETWORKS

Authors

  • Urinboeva Nazokat Author
  • Kuvondikova Gavhar Isomiddinovna Author

Keywords:

NLP, API, Twitter, Reddit, Facebook, LinkedIn.

Abstract

This article describes the use of an electronic database to study and verify the analysis of speech units in social media with the help of a corpus, the identification of marked speech changes, their specific characteristics and the reasons for their changes.

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Published

2024-06-24

How to Cite

CORPUS ANALYSIS OF SPEECH UNITS IN SOCIAL NETWORKS. (2024). «CONTEMPORARY TECHNOLOGIES OF COMPUTATIONAL LINGUISTICS», 2(22.04), 122-125. https://myscience.uz/index.php/linguistics/article/view/31

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