基于距离和属性加权的动态k -最近邻分类

Jia Wu, Z. Cai, Zhechao Gao
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引用次数: 24

摘要

KNN作为一种重要的基于最接近训练样例的分类方法,以其简单、有效和鲁棒性被广泛应用于数据挖掘中。然而,KNN面临的类概率估计、邻域大小和距离函数类型可能会影响其分类精度。许多研究者致力于通过距离加权、属性加权和动态选择等方法来提高KNN的准确性。在本文中,我们首先回顾了上述三类改进的KNN算法。然后,我们挑选了一种改进的算法,称为具有距离和属性加权的动态k-近邻算法,简称DKNDAW。在DKNDAW中,我们混合了动态选择、距离加权和属性加权方法。我们利用从Weka主网站下载的全部36个标准UCI数据集,在Weka系统中对我们的新算法进行了实验测试。在我们的实验中,我们将其与KNN、WAKNN、KNNDW、KNNDAW和DKNN进行了比较。实验结果表明,DKNDAW在分类精度上明显优于KNN、WAKNN、KNNDW、KNNDAW和DKNN。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic K-Nearest-Neighbor with Distance and attribute weighted for classification
K-Nearest-Neighbor (KNN) as an important classification method based on closest training examples has been widely used in data mining due to its simplicity, effectiveness, and robustness. However, the class probability estimation, the neighborhood size and the type of distance function confronting KNN may affect its classification accuracy. Many researchers have been focused on improving the accuracy of KNN via distance weighted, attribute weighted, and dynamically selected methods et al. In this paper, we first reviewed some improved algorithms of KNN in three categories mentioned above. Then, we singled out an improved algorithm called dynamic k-nearest-neighbor with distance and attribute weighted, simply DKNDAW. In DKNDAW, we mixed dynamic selected, distance weighted and attribute weighted methods. We experimentally tested our new algorithm in Weka system, using the whole 36 standard UCI data sets which are downloaded from the main website of Weka. In our experiment, we compared it to KNN, WAKNN, KNNDW, KNNDAW, and DKNN. The experimental results show that DKNDAW significantly outperforms KNN, WAKNN, KNNDW, KNNDAW, and DKNN in terms of the classification accuracy.
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