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Computer Intelligent Proofreading System of Translation Model Based on Improved GLR Algorithm

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DOI: 10.23977/acss.2023.070906 | Downloads: 15 | Views: 289

Author(s)

Huanhuan Gu 1

Affiliation(s)

1 Nanjing Sinovatio Technology Co., Ltd., Nanjing, Jiangsu, 210012, China

Corresponding Author

Huanhuan Gu

ABSTRACT

The intelligentization of translation computers refers to the use of modern computer science technology, network information technology and information processing theory to analyze and recognize massive texts and apply them to the translation process. This article intends to use the improved GLR algorithm to study the computerized intelligent proofreading system of translation models, and its purpose is to improve the translation accuracy of the computer-aided system. This article mainly uses experimental and comparative methods to test and study the computerized intelligent proofreading system for the translation model of the improved GLR algorithm. Experimental results show that the improved GLR algorithm machine translation's recognition accuracy rate can reach 95%. For this reason, the computer intelligent proofreading system can use the improved GLR algorithm to improve the accuracy of the system.

KEYWORDS

Improved GLR Algorithm, Translation Model, Computer Intelligence, Proofreading System

CITE THIS PAPER

Huanhuan Gu, Computer Intelligent Proofreading System of Translation Model Based on Improved GLR Algorithm. Advances in Computer, Signals and Systems (2023) Vol. 7: 42-47. DOI: http://dx.doi.org/10.23977/acss.2023.070906.

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