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Du, Wei; Saeheaw, Teeraporn – Language Learning in Higher Education, 2020
Translation teachers have long experimented with various methods to help students improve their translation competence. This study approaches the issue by developing an assessment framework based on error analysis and a translation grading system, with the aim of identifying the most common and frequent errors committed by students in their…
Descriptors: Translation, Error Analysis (Language), Chinese, English (Second Language)
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Li, Yanru – English Language Teaching, 2022
This study investigated the erroneous use of the high-frequency verb TAKE by the Chinese college learners of English as a foreign language (EFL), aiming to identify the similarities and differences between Chinese EFL learners, aimed at finding out more effective ways for the teaching and researching of the high-frequency verbs. Corpus-based…
Descriptors: Computational Linguistics, Verbs, Second Language Learning, Second Language Instruction
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Qin, Ying – International Journal of Computer-Assisted Language Learning and Teaching, 2019
This study extracts the comments from a large scale of Chinese EFL learners' translation corpus to study the taxonomy of translation errors. Two unsupervised machine learning approaches are used to obtain the computational evidences of translation error taxonomy. After manually revision, ten types of English to Chinese (E2C) and eight types…
Descriptors: Taxonomy, Translation, Computer Assisted Instruction, Second Language Learning
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Xia, Lixin – English Language Teaching, 2012
The paper discusses the infinitive errors made by Chinese college students. From the CLEC, all infinitive errors tagged as [vp5] are collected, and then the general distribution of the errors among 4 groups of college students is shown. Moreover, these errors are classified into 12 categories according to the characteristics of the usage. After…
Descriptors: Computational Linguistics, English (Second Language), Second Language Learning, Second Language Instruction