Опубликован 24.04.2025
Ключевые слова
- Artificial Intelligence,
- Computational Linguistics,
- Natural Language Processing,
- Morphological Analysis
Как цитировать
Аннотация
Artificial Intelligence (AI) has revolutionized computational linguistics, enabling advanced language processing, translation, and text generation. This article explores the key applications of AI in the field, including natural language processing (NLP), machine translation, speech recognition, and sentiment analysis. It highlights the role of deep learning models, such as transformers, in improving linguistic analysis and automation.
Additionally, the article discusses the challenges AI faces, such as bias in language models and the limitations of contextual understanding. The future prospects of AI-driven linguistic research and its implications for various industries are also examined. Through this analysis, the article aims to provide insights into the evolving relationship between AI and computational linguistics.
Библиографические ссылки
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