DIGITAL LINGUISTICS: ANALYSIS AND TRANSLATION PROCESSES THROUGH ARTIFICIAL INTELLIGENCE

DIGITAL LINGUISTICS: ANALYSIS AND TRANSLATION PROCESSES THROUGH ARTIFICIAL INTELLIGENCE

Mualliflar

  • Abduhamidova Farangiz Tolib qizi
  • Khayrullayeva Dilorom

https://doi.org/10.5281/zenodo.15590449

Kalit so‘zlar

Artificial Intelligence, digital linguistics, neural machine translation, deep learning, language analysis, ethics, multilingualism

Annotasiya

This article examines how Artificial Intelligence (AI) is transforming digital linguistics, with particular focus on language analysis and translation processes. It explores how AI-driven tools are increasingly used in linguistic research, corpus analysis, and real-time language processing. It traces developments from early rule-based systems to contemporary neural machine translation, identifying key breakthroughs such as statistical models, deep learning architectures, and transformer-based technologies, while also addressing persistent challenges including contextual ambiguity, idiomatic expression translation, and low-resource language limitations. The research highlights the crucial relationship between human expertise and AI capabilities, emphasizing the importance of human oversight in training, validating, and interpreting AI systems.

Mualliflar haqida

Abduhamidova Farangiz Tolib qizi

Uzbekistan State World Languages University Graduate student of the English faculty 2

Khayrullayeva Dilorom

Uzbekistan State World Languages University

Senior Teacher

Foydalanilgan adabiyotlar ro‘yhati

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Nashr qilingan

2025-06-05

Qanday qilib iqtibos keltirish kerak

Abduhamidova Farangiz Tolib qizi, & Khayrullayeva Dilorom. (2025). DIGITAL LINGUISTICS: ANALYSIS AND TRANSLATION PROCESSES THROUGH ARTIFICIAL INTELLIGENCE. ZAMONAVIY TILSHUNOSLIK ISTIQBOLLARI: MUAMMOLAR VA YUTUQLAR MAVZUSIDA XALQARO ILMIY AMALIY ANJUMAN, 1(6), 365–371. https://doi.org/10.5281/zenodo.15590449

Nashr

Sho'ba

SECTION 3. DIGITAL TECHNOLOGIES AND ARTIFICIAL INTELLIGENCE IN LINGUISTICS

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