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A New Clustering Method Based on Weighted Kernel K-Means for Non-linear Data

机译:一种基于加权内核K-ilse的新集群方法,用于非线性数据

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摘要

Clustering is the process of gathering objects into groups based on their feature's similarity. In this paper, we concentrate on Weighted Kernel K-Means method for its capability to manage nonlinear separability and high dimensionality in the data. A new slight modification of WKM algorithm has been proposed and tested on real Rice data. The results show that the accuracy of proposed algorithm is higher than other famous clustering algorithm and ensures that the WKM is a good solution for real world problems.
机译:群集是根据其特征的相似性将对象收集到组的过程。在本文中,我们专注于加权内核K-is方法,以实现数据中的非线性可分离性和高维度的能力。已经提出了对WKM算法的新微小修改,并在实际米数据上进行了测试。结果表明,所提出的算法的准确性高于其他着名聚类算法,并确保WKM是真实世界问题的良好解决方案。

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