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AN ANALYTICAL APPROACH TO THE CHALLENGES OF ARTIFICIAL INTELLIGENCE IN CROSS-LINGUISTIC TRANSLATION FROM ENGLISH INTO OTHER LANGUAGES (ON THE EXAMPLE OF ENGLISH-RUSSIAN TRANSLATION)
SIAD SYNAPSES: INSIGHTS ACROSS THE DISCIPLINES
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Keywords

artificial intelligence, machine translation, cross-linguistic communication, translation challenges, neural networks

How to Cite

AN ANALYTICAL APPROACH TO THE CHALLENGES OF ARTIFICIAL INTELLIGENCE IN CROSS-LINGUISTIC TRANSLATION FROM ENGLISH INTO OTHER LANGUAGES (ON THE EXAMPLE OF ENGLISH-RUSSIAN TRANSLATION). (2026). SYNAPSES: INSIGHTS ACROSS THE DISCIPLINES, 3(4), 569-575. https://www.universalpublishings.com/index.php/siad/article/view/18115

Abstract

The rapid advancement of artificial intelligence (AI) has significantly transformed the field of translation, particularly in the context of cross-linguistic communication. AI-based translation systems, including neural machine translation (NMT), have improved accessibility and efficiency in multilingual information exchange. However, despite these technological advancements, numerous challenges persist, especially when translating texts from English into structurally and culturally diverse languages. This study aims to analyze the linguistic, cultural, and technological challenges associated with AI-driven translation. The research employs a qualitative analytical approach, examining typical translation outputs and identifying recurring issues such as semantic ambiguity, contextual misinterpretation, and cultural mismatch. The findings reveal that while AI systems demonstrate high performance in handling general language structures, they struggle with idiomatic expressions, stylistic nuances, and culturally embedded meanings. The study highlights the necessity of integrating linguistic knowledge and human expertise into AI systems to improve translation quality and reliability.

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References

1. Philipp Koehn. Neural Machine Translation. Cambridge: Cambridge University Press, 2020.

2. Jurafsky Daniel, James H. Martin. Speech and Language Processing. 3rd ed. Draft. Stanford University, 2023.

3. Bahdanau Dzmitry, Kyunghyun Cho, Yoshua Bengio. Neural Machine Translation by Jointly Learning to Align and Translate // arXiv preprint arXiv:1409.0473. 2014.

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5. Koehn Philipp. Statistical Machine Translation. Cambridge: Cambridge University Press, 2010.

6. Hutchins W. John, Somers Harold. An Introduction to Machine Translation. London: Academic Press, 1992.

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