基于密度的改进KNN文本分类算法

Kansheng Shi, Lemin Li, Haitao Liu, Jie He, Naitong Zhang, Wentao Song
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引用次数: 44

摘要

在过去的几年中,文本分类获得了蓬勃发展的兴趣。KNN方法作为一种简单有效的非参数分类方法,在文献分类中得到了广泛的应用。然而,训练集的不均匀分布会对KNN分类结果产生负面影响。此外,文本的不均匀分布现象在Web上的文档中非常普遍。为了解决这个问题,本文提出了一种改进的KNN方法,称为DBKNN。实验结果表明,DBKNN算法可以更好地服务于大量不均匀分布文档的分类请求。
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An improved KNN text classification algorithm based on density
Text classification has gained booming interest over the past few years. As a simple, effective and nonparametric classification method, KNN method is widely used in document classification. However, the uneven distribution in training set will affect the KNN classified result negatively. Moreover, the uneven distribution phenomenon of text is very common in documents on the Web. To tackling on this, this paper proposes an improved KNN method denoted by DBKNN. Experimental results show that the DBKNN algorithm can better serve classification requests for large sets of unevenly distributed documents.
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