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An improved exponential metric space approach for <scp>C‐mean</scp> clustering analysing

Rakesh Kumar, Varun Joshi, Gaurav Dhiman, Wattana Viriyasitavat

2021Expert Systems28 citationsDOI

Abstract

Abstract In this article, we present two resilient algorithms, the improved alternative hard c‐means (IAHCM) and the improved alternative fuzzy c‐means (IAFCM). We implement the Gaussian distance‐dependent function proposed by Zhang and Chen (D.‐Q. Zhang and Chen, 2004). In some cases, Zhang and Chen's metric distance does not account for the clustering centroid effect predicted by the large value. R* is employed in IAHCM and IAFCM to discover robust results while minimizing its sensitivity. Experiments are conducted using two‐and three‐dimensional data, including Diamond and Iris real‐world data. The results are based on demonstrating the robust simplicity and applicability of the offered algorithms. Similarly, computational complexity is assessed.

Topics & Concepts

ChenComputer scienceCluster analysisCentroidMetric (unit)ZhàngGaussianExponential functionAlgorithmData miningArtificial intelligenceMathematicsEconomicsChinaQuantum mechanicsPolitical scienceMathematical analysisPaleontologyPhysicsBiologyLawOperations managementFace and Expression RecognitionAdvanced Clustering Algorithms ResearchRemote-Sensing Image Classification