基于概念向量空间模型的电子邮件分类新方法

C. Zeng, Zhao Lu, J. Gu
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引用次数: 10

摘要

基于内容的电子邮件分类方法一般采用向量空间模型。该模型是基于电子邮件内容中出现的每个独立单词的频率构建的。基于频率的VSM没有考虑词的上下文环境,特征向量不能准确地表示Email内容,导致分类不准确。提出了一种基于概念向量空间模型的WordNet电子邮件分类方法。该方法基于WordNet,在训练过程中用同义词集替换特征向量中的术语,并考虑同义词集之间的上下义关系,提取类别的高级信息。我们设计了一个基于VSM概念的电子邮件分类系统,并进行了一系列的实验。结果表明,该方法可以提高电子邮件分类的准确率,特别是在训练集较小的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Approach to Email Classification Using Concept Vector Space Model
Email classification methods based on the content general use vector space model. The model is constructed based on the frequency of every independent word appearing in Email content. Frequency based VSM does not take the context environment of the word into account, thus the feature vectors can not accurately represent Email content, which will result in the inaccurate of classification. This paper presents a new approach to Email classification based on the concept vector space model using WordNet. In our approach, based on WordNet we extract the high-level information on categories during training process by replacing terms in the feature vector with synonymy sets and considering the hypernymy-hyponymy relation between synonymy sets. We design a Email classification system based on the concept VSM and carry on a series of experiments. The results show that our approach could improve the accuracy of Email classification especially when the size of training set is small.
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