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Topical issue
Improving the quality of machine translation using the reverse model
N. A. Skachkov, K. V. Vorontsov Federal Research Center “Computer Science and Control,” Russian Academy
of Sciences, Moscow, 119333 Russia
Abstract:
Machine translation is a natural language text processing task that aims to automatically translate input text from one language into another language. The currently known machine translation models show a fairly high quality of translation between large languages, but for smaller language areas, represented by less data, the problem is still not solved. Different methods are used to deal with various errors in automatic translation systems. This paper discusses approaches that use translation models of reverse language directions and improve consistency between translations of the same text using direct and reverse translation models. The paper presents a general theoretical justification for such methods in terms of solving the likelihood maximization problem and also proposes a method for stable training of modern models using cyclic translations.
Keywords:
machine translation, neural network, stochastic gradient descent, probabilistic modeling, maximum likelihood, significance selection, cyclic translation, model fine-tuning.
Citation:
N. A. Skachkov, K. V. Vorontsov, “Improving the quality of machine translation using the reverse model”, Avtomat. i Telemekh., 2022, no. 12, 31–43; Autom. Remote Control, 83:12 (2022), 1897–1907
Linking options:
https://www.mathnet.ru/eng/at15872 https://www.mathnet.ru/eng/at/y2022/i12/p31
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Abstract page: | 139 | References: | 24 | First page: | 37 |
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