Affiliation:
1. School of Journalism, Nanjing University of Finance & Economics, Jiangsu, Nanjing 210000, China
Abstract
With the steady growth of the global economy, the communication between countries in the world has become increasingly close. Due to its translation efficiency and other problems, the traditional manual translation has gradually failed to meet the current people’s translation requirements. With the rapid development of machine-learning and deep-learning related technologies, artificial intelligence-related technologies have affected various industries, including the field of machine translation. Compared with traditional methods, neural network-based machine translation has high efficiency, so this field has attracted many scholars’ intensive research. How to improve the accuracy of neural machine translation through deep learning technology is the core problem that researchers study. In this paper, the neural machine translation model based on generative adversarial network is studied to make the translation result of neural network more accurate and three-dimensional. The model uses adversarial thinking to consider the sequence of emotion direction so that the translation results are more humanized. We set up several experiments to verify the efficiency of the model, and the experimental results prove that the proposed model is suitable for Chinese-English machine translation.
Subject
General Mathematics,General Medicine,General Neuroscience,General Computer Science
Reference42 articles.
1. Machine translation using natural language processing
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3. Findings of the 2013 Workshop on Statistical Machine Translation;O. Bojar
Cited by
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