Neural Machine Translation of Electrical Engineering with Fusion of Memory Information
Yuan Chen,
Zikang Liu,
Juwei Zhang
Abstract:This paper proposes a new neural machine translation model of electrical engineering that combines a transformer with gated recurrent unit (GRU) networks. By fusing global information and memory information, the model effectively improves the performance of low-resource neural machine translation. Unlike traditional transformers, our proposed model includes two different encoders: one is the global information encoder, which focuses on contextual information, and the other is the memory encoder, which is respo… Show more
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