Affiliation:
1. College of Petroleum Equipment and Electronic Engineering, Dongying Vocational Institute , No. 129, Dongcheng Fuqian Street , Dongying , Shandong 257091 , China
Abstract
Abstract
Based on neural machine translation, this article introduced the ConvS2S system and transformer system, designed a semantic sharing combined transformer system to improve translation quality, and compared the three systems on the NIST dataset. The results showed that the operation speed of the semantic sharing combined transformer system was the highest, reaching 3934.27 words per second; the BLEU value of the ConvS2S system was the smallest, followed by the transformer system and the semantic sharing combined transformer system. Taking NIST08 as an example, the BLEU values of the designed system were 4.74 and 1.49 higher than the other two systems. The analysis of examples showed that the semantic sharing combined transformer had higher translation quality. The experimental results show that the proposed system is reliable in English content translation and can be further promoted and applied in practice.
Subject
Artificial Intelligence,Information Systems,Software
Cited by
5 articles.
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