语义特征提取器对英语句子智能翻译的研究

Shulun Jiang
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摘要

为了提高机器翻译的性能,本文简要介绍了可用于提取语义特征向量的算法。然后,将上述算法与编码器-解码器翻译算法进行了整合,并对整合后的算法进行了测试。首先,测试了基于长短期记忆(LSTM)的语义特征提取器的语义识别性能,然后与不包含语义特征的翻译算法以及包含卷积神经网络提取的语义特征的翻译算法进行了比较。结果表明,基于 LSTM 的语义特征提取器能准确识别源语言的语义。与其他两种算法相比,基于 LSTM 语义特征的拟议翻译算法实现了更准确的翻译。此外,它受源语言长度的影响较小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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A study on intelligent translation of English sentences by a semantic feature extractor
In order to enhance the performance of machine translation, this article briefly introduced algorithms that can be used to extract semantic feature vectors. Then, the aforementioned algorithms were integrated with the encoder–decoder translation algorithm, and the resulting algorithms were subsequently tested. First, the performance of the semantic recognition of the long short-term memory (LSTM)-based semantic feature extractor was tested, followed by a comparison with the translation algorithm that does not include semantic features, as well as the translation algorithm that incorporates convolutional neural network-extracted semantic features. The findings demonstrated that the LSTM-based semantic feature extractor accurately identified the semantics of the source language. The proposed translation algorithm, which is based on LSTM semantic features, achieved more accurate translations compared to the other two algorithms. Furthermore, it was less affected by the length of the source language.
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