Improving the Clustering Performance of the K-Means Algorithm for Non-linear Clusters

Naaman Omar, Adel Al-zebari, A. Şengur
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引用次数: 1

Abstract

K-means clustering is known to be the most traditional approach in machine learning. It's been put to a lot of different uses. However, it has difficulty with initialization and performs poorly for non-linear clusters. Several approaches have been offered in the literature to circumvent these restrictions. Kernel K-means (KK-M) is a type of K-means that falls under this group. In this paper, a two-stepped approach is developed to increase the clustering performance of the K-means algorithm. A transformation procedure is applied in the first step where the low-dimensional input space is transferred to a high-dimensional feature space. To this end, the hidden layer of a Radial basis function (RBF) network is used. The typical K-means method is used in the second part of our approach. We offer experimental results comparing the KK-M on simulated data sets to assess the correctness of the suggested approach. The results of the experiments show the efficiency of the proposed method. The clustering accuracy attained is higher than that of the KK-M algorithm. We also applied the proposed clustering algorithm on image segmentation application. A series of segmentation results were given accordingly.
改进非线性聚类k -均值算法的聚类性能
众所周知,K-means聚类是机器学习中最传统的方法。它有很多不同的用途。然而,它在初始化方面有困难,并且在非线性集群中表现不佳。文献中提出了几种方法来规避这些限制。核k均值(KK-M)是属于这一类的k均值。本文提出了一种两步法来提高K-means算法的聚类性能。第一步采用变换过程,将低维输入空间转换为高维特征空间。为此,使用了径向基函数(RBF)网络的隐藏层。我们的方法的第二部分使用了典型的K-means方法。我们提供了在模拟数据集上比较KK-M的实验结果,以评估所建议方法的正确性。实验结果表明了该方法的有效性。所得聚类精度高于KK-M算法。我们还将提出的聚类算法应用于图像分割。给出了一系列的分割结果。
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