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A Case Study of Korean EFL Learners¡¯ Interlanguage in Verb Morphology
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A Comparative Error Analysis of Neural Machine Translation Output: Based on Film Corpus
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Lexical Effects in Island Constraints: A Deep Learning Approach
30±Ç 1È£ (2022³â 3¿ù)
- A Comparative Error Analysis of Neural Machine Translation Output: Based on Film Corpus
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Sungran Koh
Pages : 157-177
Abstract
Keywords
# machine translation # EFL learners # errors # incorrect words # incorrect form
References
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