Data-Driven Teaching Model Design of College English Translation Using Intelligent Processing Technology

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Abstract

DDL (data-driven learning) advocates a deep integration of modern information technology and resources based on corpora and search engines with education and teaching, opening up a new path for college English translation instruction. The concept and characteristics of DDL theory are discussed in this paper. This system proposes an automatic scoring model of English translation based on mixed vector space, which comprehensively analyzes the target translation from two aspects: grammatical errors and semantic relevance, in order to address the shortcomings of current algorithms. The findings of this study show that using a combination of English fragmentation translation and adaptive resource push, learners can learn English reading using mobile terminals in fragmented learning situations, as well as receive targeted training for weak links in English reading in fragmented learning time and space, improving their learning efficiency and effect.

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Zhang, J. (2022). Data-Driven Teaching Model Design of College English Translation Using Intelligent Processing Technology. Wireless Communications and Mobile Computing, 2022. https://doi.org/10.1155/2022/6559772

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