KMK based hybrid approach for the performance estimation in case of diabetes data

Yasir Minhaj Dubey Animesh Kumar Khan
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Abstract

In this paper k-means clustering algorithm has been used with k-points (KMK) selection. It has been applied on the PIMA Indian diabetes dataset. It has been used for distance estimation, centroid selection, effect of data size variations and for the analysis of the complete record. The cluster section has been found to be improved based on k-point selection. It has been used for the assignment of initial centroid. The results indicate that the KMK algorithm is capable in the improvement of centroid selection and distance measures in the assignments of data points. It is due to the better centroid selection mechanism by k-points selection based on the weight measures from the selected dataset. So, the obtained clusters are better in comparison to k-means.
基于KMK的糖尿病数据性能估计混合方法
本文采用k-means聚类算法进行k点选择。它已应用于PIMA印度糖尿病数据集。它已被用于距离估计、质心选择、数据大小变化的影响以及完整记录的分析。发现基于k点选择的聚类截面得到了改进。它已被用于初始质心的赋值。结果表明,KMK算法在数据点分配中的质心选择和距离度量方面有较好的改进。这是由于基于所选数据集的权值进行k点选择的更好的质心选择机制。因此,与k-means相比,得到的聚类更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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