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Numerical Simulation of Ambiguity Resolution in Multiple Information Streams Based on Network Machine Translation

机译:基于网络机器的多信息流中模糊分辨率的数值模拟

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In natural language, the phenomenon of polysemy is widespread, which makes it very difficult for machines to process natural language. Word sense disambiguation is a key issue in the field of natural language processing. This paper introduces the more common statistical learning methods used in the field of word sense disambiguation. Using the naive Bayesian machine learning method and the feature vector set extracted and constructed by the Dice coefficient method, a semantic word disambiguation model based on semantics is realized. The results of comparative experiments show that the proposed method is better compared with known systems. This paper proposes a method for disambiguation of word segmentation in professional fields based on unsupervised learning. This method does not rely on professional domain knowledge and training corpus and only uses the frequency, mutual information, and boundary entropy information of the string in the test corpus to solve the problem of word segmentation ambiguity. The experimental results show that these three evaluation standards can solve the problem of word segmentation ambiguity in professional fields and improve the effect of word segmentation. Among them, the segmentation result using mutual information is the best, and the performance is stable.
机译:在自然语言中,多义的现象是普遍的,这使得机器可以处理自然语言很难。词语感消歧义是自然语言处理领域的关键问题。本文介绍了在词感歧义字段中使用的更常见的统计学习方法。利用朴素贝叶斯机器学习方法和由骰子系数方法提取和构造的特征向量集,实现了基于语义的语义字消歧模型。比较实验结果表明,与已知系统相比,该方法更好。本文提出了一种基于无监督学习的专业领域中的词分割的方法。该方法不依赖于专业域知识和培训语料库,并且仅使用测试语料库中字符串的频率,互信息和边界熵信息来解决词语分割歧义的问题。实验结果表明,这三项评估标准可以解决专业领域中的词组分割歧义的问题,提高字分割的效果。其中,使用相互信息的分割结果是最好的,性能稳定。

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  • 来源
    《Complexity》 |2020年第1期|共10页
  • 作者

    Lei Wang; Qun Ai;

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