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Research on Clustering Method Based on Weighted Distance Density and K-Means

Wei Yang, Hua Long, Lihua Ma, Huifang Sun

2020Procedia Computer Science26 citationsDOIOpen Access PDF

Abstract

In this paper, the effect of the initial clustering center selection on the performance of the K-means algorithm is studied, and the performance of the algorithm is enhanced through better initialization techniques. In the K-means clustering process, when calculating the density of a data set by using a weighted distance density calculation method, significant improvement in the defects of poor clustering results caused by the local optimum and large intra-cluster variance in the traditional K-means clustering algorithm has been found. Experimental results show that by using the improved method proposed in this paper, the intra-cluster variance of clustering results is reduced by 15.5% compared with the traditional method, which makes great improvement in the performance of the algorithm.

Topics & Concepts

Cluster analysisComputer scienceInitializationVariance (accounting)Selection (genetic algorithm)Determining the number of clusters in a data setk-medians clusteringCURE data clustering algorithmSet (abstract data type)Correlation clusteringCluster (spacecraft)Data miningProcess (computing)AlgorithmPattern recognition (psychology)Artificial intelligenceOperating systemAccountingBusinessProgramming languageData Mining Algorithms and ApplicationsAdvanced Clustering Algorithms ResearchAnomaly Detection Techniques and Applications