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Philosophy Inheritance: The Language Engineering Path of Translation Conception of Zhang Boran

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Online published: 2023-06-01

Abstract

On the basis of the research of linguistic theory, it is the mission of language engineering to develop an information system taking natural language as medium, which is exactly the language engineering vision of translation put forward by Professor Zhang Boran. First, we deeply explore the speech recognition and discuss the semantic disambiguation by introducing phonetic chunking to improve the accuracy of speech recognition. Second, we propose a scheme to construct a terminology corpus and discuss the path of terminology corpus assisting translation. From the perspective of linguistics, AI machine translation is explored to provide enlightenment for the study of language engineering path and directions for the study of AI interpretation and translation.

Cite this article

ZHANG Di, CHENG Lulu . Philosophy Inheritance: The Language Engineering Path of Translation Conception of Zhang Boran[J]. Contemporary Foreign Languages Studies, 2023 , 23(2) : 74 -81 . DOI: 10.3969/j.issn.1674-8921.2023.02.006

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