Automatic translation of spoken English based on improved machine learning algorithm

Author:

Lin Lin1,Liu Jie1,Zhang Xuebing1,Liang Xiufang1

Affiliation:

1. Cangzhou Normal University, Cangzhou, Hebei, China

Abstract

Due to the complexity of English machine translation technology and its broad application prospects, many experts and scholars have invested more energy to analyze it. In view of the complex and changeable English forms, the large difference between Chinese and English word order, and insufficient Chinese-English parallel corpus resources, this paper uses deep learning to complete the conversion between Chinese and English. The research focus of this paper is how to use language pairs with rich parallel corpus resources to improve the performance of Chinese-English neural machine translation, that is, to use multi-task learning to train neural machine translation models. Moreover, this research proposes a low-resource neural machine translation method based on weight sharing, which uses the weight-sharing method to improve the performance of Chinese-English low-resource neural machine translation. In addition, this study designs a control experiment to analyze the effectiveness of this study model. The research results show that the model proposed in this paper has a certain effect.

Publisher

IOS Press

Subject

Artificial Intelligence,General Engineering,Statistics and Probability

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