基于数据融合的英语翻译自适应模型研究

Ruying Huang
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引用次数: 0

摘要

本研究基于注意机制的英语翻译自适应模型。在分析了影响英语翻译的关键因素后,利用注意机制提取各区域中这些因素的详细特征,形成特征样本集,并对特征样本集进行融合和归一化,从而得到一个全新的特征样本集。输入构建英语语言翻译模型,输出翻译结果,根据结果预测模型的整体翻译效果。结果表明,该方法的预测模型在训练和测试中具有较高的预测精度。
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Research on adaptive model of English translation based on data fusion
This research is based on the attention mechanism English translation adaptive model. After analyzing the key factors that affect English language translation, the attention mechanism is used to extract the detailed features of such factors in each region to form a feature sample set, and the feature sample set is fused and normalized, so as to obtain a brand-new feature sample set. Input to build an English language translation model and output the translation results, According to the results, the overall translation effect of the model is predicted. The results show that the prediction model of this method has high prediction accuracy in training and testing.
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