Deep Learning Technologies Transforming the Landscape of Language Acquisition and Pedagogical Innovation
Keywords:
deep learning, language acquisition, artificial intelligence, educational technology, personal-ized learning, natural language processingAbstract
The integration of deep learning technologies into language learning represents a paradig-matic shift in educational methodology, offering unprecedented opportunities for personal-ized, adaptive, and efficient language acquisition. This comprehensive study examines the theoretical foundations, practical applications, and pedagogical implications of deep learning in language education. Through an extensive review of contemporary literature and empiri-cal evidence, this research explores how neural networks, natural language processing, and machine learning algorithms are revolutionizing traditional language instruction. The study investigates three critical dimensions: the technological architecture underlying deep learning systems, the pedagogical effectiveness of AI-driven language learning platforms, and the challenges associated with implementation in diverse educational contexts. Find-ings reveal that deep learning technologies significantly enhance learner engagement, pro-vide real-time adaptive feedback, and facilitate personalized learning pathways. However, challenges related to data privacy, algorithmic bias, and the need for human pedagogical oversight remain critical considerations. This research contributes to the growing body of knowledge on educational technology by providing a comprehensive framework for under-standing and implementing deep learning in language education.





