面向智能分析的汉语写作语法结构和功能学习算法设计与应用

IF 3.1 Q1 Mathematics
Jingtao Ma, Liang Chen
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引用次数: 0

摘要

本研究运用拉森-弗里曼语法教学三维理论,对汉语写作过程中的语法属性 "形"、"义"、"用 "进行量化分析。本研究使用 PCFG 模型提取句法依存树,并借助 TF-IDF 表示树结构的特征。同时,Transformer 模型提取句子的语义和句法特征。同时,去除了位置编码器,以确保模型从句法层面获取信息。此外,还提出了一种用于生成中文写作语法文本重述的无监督方法,以及一种用于生成重述句子的语法树生成器,该生成器可有效提取输入语法序列的特征。此外,研究还包括基于语法功能匹配的写作特征分析,使用分层聚类算法分析 60 个语法功能的相似性。最后,在 30 个中文写作文本集(每个文本集包含 10 篇作文)上进行了验证,结果表明无标签语法功能识别的准确率很高。LDA 模型确定的最佳写作主题数量为 150 个。这项研究强调了智能分析技术在提高中文写作质量方面的潜在应用。它为深入理解汉语写作中语法结构和功能之间的相互作用提供了新的视角。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Algorithm Design and Application of Grammatical Structure and Function Learning in Chinese Writing for Intelligent Analysis
This study utilizes the Larsen-Freeman three-dimensional theory of grammar teaching to quantitatively analyze the grammatical attributes “form”, “meaning” and “usage” in the Chinese writing process. The study uses the PCFG model to extract the syntactic dependency tree and represents the features of the tree structure with the help of TF-IDF. Meanwhile, the Transformer model extracts the semantic and syntactic features of sentences. At the same time, the positional encoder is removed to ensure that the model obtains information from the syntactic level. Further, an unsupervised method for generating grammatical textual recapitulation for Chinese Writing is proposed, as well as a Grammar Tree Generator for generating recapitulated sentences, which efficiently extracts the features of the input grammatical sequences. In addition, the study also includes writing feature analysis based on grammatical function matching, using a hierarchical clustering algorithm to analyze the similarity of 60 grammatical functions. Finally, validation was performed on 30 Chinese writing text collections, each containing 10 compositions, and the results showed high accuracy of unlabeled grammatical function recognition. The LDA model determined the optimal number of writing topics to be 150. This study highlights the potential application of intelligent analysis techniques in improving the quality of Chinese Writing. It provides new perspectives for an in-depth understanding of the interplay between grammatical structures and functions in the Chinese writing.
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来源期刊
Applied Mathematics and Nonlinear Sciences
Applied Mathematics and Nonlinear Sciences Engineering-Engineering (miscellaneous)
CiteScore
2.90
自引率
25.80%
发文量
203
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