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Leveraging Semantic Analysis in Machine Learning for Addressing Unstructured Challenges in Education

Said Saidakhrarovich GulyamovTashkent State University of Law,Department of Cyber Law,Tashkent,UzbekistanRabim Alikulovich Fayzievline Tashkent State University of Economics,Department of Mathematical Methods in Economics,Tashkent,UzbekistanAndrey Aleksandrovich RodionovInstitute of Advanced Training and Statistical Research at the State Statistics Committee of the Republic of Uzbekistan,Department of "ICT and Digital Economy",Tashkent,UzbekistanGeorgiy Andreevich JakupovUzbekistan State World Languages University,Tashkent,Uzbekistan
2023en
ABI

Annotatsiya

The present study explores the role of semantic analysis in machine learning for addressing unstructured challenges in education. Through a comparative analysis and literature review, various semantic analysis techniques and machine learning algorithms were investigated, examining their effectiveness and the factors influencing their success in educational contexts. The findings demonstrate that advanced semantic analysis techniques, such as word embeddings and deep learning-based approaches, significantly improve the performance of machine learning algorithms in processing unstructured data, leading to better natural language understanding and more accurate insights from educational data. Factors such as data quality, algorithmic complexity, and computational resources play a crucial role in determining the success of semantic analysis-based machine learning models in education. The study concludes with recommendations for further development and application of semantic analysis and machine learning in education.

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