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Deep Chinese Word Sense Disambiguation Method Based on Sequence to Sequence

机译:基于序列到序列的深度中文词义消歧方法

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In the field of natural language processing, word sense disambiguation plays an important role. The word sense disambiguation method based on traditional machine learning is not high in accuracy, and it is necessary to extract text features manually; the method based on deep learning has not been applied to the case where there are many ambiguous meanings. For the characteristics of Chinese text, the deep Chinese word sense disambiguation method based on sequence to sequence is proposed in this paper. The input is a word context sequence, and the output is a word meaning sequence, which is applicable to all word meaning ambiguity cases. Finally, the method is compared with other seven methods. Test with the data set in the SemEval-2007 Task #5 task. The results show that the test accuracy of the disambiguation is improved by 11.48% compared with the method with the highest accuracy among the seven methods.
机译:在自然语言处理领域,词义消歧起着重要作用。基于传统机器学习的词义消歧方法精度不高,需要人工提取文本特征。基于深度学习的方法尚未应用于含糊不清的情况。针对中文文本的特点,提出了一种基于顺序的深度中文词义消歧方法。输入是单词上下文序列,输出是单词含义序列,适用于所有单词含义歧义的情况。最后,将该方法与其他七种方法进行了比较。使用SemEval-2007 Task#5任务中的数据集进行测试。结果表明,与七种方法中精度最高的方法相比,消歧测试的准确性提高了11.48%。

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