Indonesian Journal of Electrical Engineering and Computer Science
Vol 27, No 3: September 2022

DIA-English-Arabic neural machine translation domain: sulfur industry

Diadeen Ali Hameed (Tikrit University)
Tahseen Ameen Faisal (University of Tikrit)
Alaa Khudhair Abbas (University of Tikrit)
Harith Abdullah Ali (University of Tikrit)
Ghanim Thiab Hasan (Tikrit University)



Article Info

Publish Date
01 Sep 2022

Abstract

The aim of this paper is the design and development a new English-Arabic neural machine translation (NMT) called DIA translation system. The main purpose of the designing system is to study translator limited sulfur industry domain as a stand-alone tool in order to improve the translation quality. Machine translation (MT) are very sensitive to the domains they were trained on and can be integrated with general (English-Arabic) MT systems. The proposed system has mainly four directions: supports chemical symbols, terms, phrase, and text and it is evaluated by using (1,200) various English declarative sentences which written by English Language experts. The obtained results indicate that this system is high effective and has an accuracy of 79.33% in comparison with Google translator which has 38.67% for the same test samples.

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