利用模糊隶属度准则选择好的类代表,提高基于支持向量机的文档分类器的性能

Sharad Verma, Aditi Sharan
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引用次数: 1

摘要

这项工作是一个尝试,以提高支持向量机的性能,为文档分类使用模糊隶属度的概念在一个类的文档。我们提出了一种新的计算类代表向量的方法,即基于预处理均值的FSVM (PM-FSVM)。PM-FSVM的概念是在选取类代表向量(class representative vector, CR)之前,先对均值向量进行预处理,并借助均匀性度量。我们工作的优势在于减少了异常值的影响,并为能够很好地代表其各自类别的文件分配了更高的隶属度。将该模型与标准支持向量机和FSVM进行了比较。实验结果表明,我们的方法在查全率和查准率方面都优于现有的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing the performance of SVM based document classifier by selecting good class representative using fuzzy membership criteria
This work is an attempt to enhance the performance of SVM for document classification using the concept of assigning fuzzy membership to documents in a class. We have proposed a novel way of computing the class representative vectors to get better membership value viz. Preprocessed Mean based FSVM (PM-FSVM). PM-FSVM is based on the concept of preprocessing the mean vector before selecting the class representative (CR) vector with the help of uniformity measure. The strength of our work lies in reducing the effect of outliers and assigning higher membership to the documents which are good representative of their respective classes. The proposed models were compared with standard SVM and FSVM. Experimental results show that our work performs better than existing ones both in terms of recall and precision.
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