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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Weighted k-Prototypes Clustering Algorithm Based on the Hybrid Dissimilarity Coefficient
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Weighted k-Prototypes Clustering Algorithm Based on the Hybrid Dissimilarity Coefficient

机译:基于混合异化系数的加权K原型聚类算法

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The k-prototypes algorithm is a hybrid clustering algorithm that can process Categorical Data and Numerical Data. In this study, the method of initial Cluster Center selection was improved and a new Hybrid Dissimilarity Coefficient was proposed. Based on the proposed Hybrid Dissimilarity Coefficient, a weighted k-prototype clustering algorithm based on the hybrid dissimilarity coefficient was proposed (WKPCA). The proposed WKPCA algorithm not only improves the selection of initial Cluster Centers, but also puts a new method to calculate the dissimilarity between data objects and Cluster Centers. The real dataset of UCI was used to test the WKPCA algorithm. Experimental results show that WKPCA algorithm is more efficient and robust than other k-prototypes algorithms.
机译:k原型算法是一种混合聚类算法,可以处理分类数据和数值数据。在该研究中,提高了初始聚类中心选择的方法,提出了一种新的混合异化系数。基于所提出的混合异化系数,提出了一种基于混合异化系数的加权K原型聚类算法(WKPCA)。所提出的WKPCA算法不仅改进了初始集群中心的选择,而且还提出了一种新方法来计算数据对象和集群中心之间的不相似性。 UCI的实时数据集用于测试WKPCA算法。实验结果表明,WKPCA算法比其他K原型算法更有效且鲁棒。

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