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Association Relationship Analyses of Stylistic Syntactic Structures

机译:文体关系分析文体句法结构

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Exploring linguistic features and characteristics helps better understand natural language. Recently, there have been many studies on the internal relationships of linguistic features, such as collocation of morphemes, words, or phrases. Although they have drawn many useful conclusions, some summarized linguistic rules lack physical verification of large-scale data. Due to the development of machine learning theories, we are now able to use computer technologies to process massive corpus automatically. In this paper, we reveal a new methodology to conduct linguistic research, in which machine learning algorithms help extract the syntactic structures and mine their intrinsic relationships. Not only the association of parts of speech (POS), but also the positive and negative correlations of syntactic structures, linear and nonlinear correlation are considered, which have not been well studied before. Combined with the linguistic theory, detailed analyses show that the association between parts of speech and syntactic structures mined by machine learning method has an excellent stylistic explanatory effect.
机译:探索语言特征和特征有助于更好地了解自然语言。最近,有很多关于语言特征的内部关系的研究,例如语素,单词或短语的搭配。虽然他们已经绘制了许多有用的结论,但一些总结语言规则缺乏大规模数据的物理验证。由于机器学习理论的开发,我们现在能够使用计算机技术自动处理大规模的语料库。在本文中,我们揭示了一种进行语言研究的新方法,其中机器学习算法有助于提取句法结构并挖掘它们的内在关系。不仅是语音(POS)部分的关联,而且考虑了语法结构,线性和非线性相关的正和负相关,这在之前没有很好地研究过。结合语言理论,详细分析表明,机器学习方法开采的言语和句法结构部分之间的关​​联具有出色的文体解释效果。

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