XML文档分类中特征表达方法的研究
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引用本文:魏东平,马弋惠?覮.XML文档分类中特征表达方法的研究[J].计算技术与自动化,2020,(3):91-96
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魏东平,马弋惠?覮 (中国石油大学(华东) 计算机科学与技术学院山东 青岛 266580) 
中文摘要:XML文档分类技术可以高效地管理海量存在的数据,XML文档同时拥有结构信息和文本信息。为充分利用XML特点,优化分类效果,在结构链接表达模型(structured link vector model,简称SLVM)的基础上,提出了一种新的特征表达方法,即P-SLVM表达模型。该模型在传统的tf*idf的权重设置方式基础上,根据特征词在类中的分布情况,对特征词权重设置进行改进,同时利用泊松分布理论、特征词所在位置等对结构单元进行加权,以更为有效地表达结构信息和内容信息。实验结果表明,在P-SLVM表达模型下进行的XML文档的分类,有更好的分类效果。
中文关键词:XML文档  分类  结构链接模型  tf*idf  泊松分布
 
Research on Feature Expression Methods in XML Document Classification
Abstract:XML document classification technology can efficiently manage massive data,XML documents have both structural and textual information. In order to make full use of the characteristics of XML and optimize the classification effect,this paper proposes a new feature expression method based on structured link vector model (SLVM),namely P-SLVM expression model. Based on the traditional tf*idf weight setting method,the model improves the feature word weight setting according to the distribution of feature words in the class,and uses the Poisson distribution theory and the location of the feature words to weight the structural units. To more effectively express structural information and content information. The experimental results show that the classification of XML documents under the P-SLVM expression model has a better classification effect.
keywords:XML document  classification  structure link model  tf*idf  Poisson distribution
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