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The Border K-Means Clustering Algorithm for One Dimensional Data

Ryan Froese, James W. Klassen, Carson K. Leung, Tyler S. Loewen

202245 citationsDOI

Abstract

Clustering has been widely used for data pre-processing, mining, and analysis. The k-means clustering algorithm is commonly used because of its simplicity and flexibility to work in many real-life applications and services. Despite being commonly used, the k-means algorithm suffers from non-deterministic results and run times that greatly vary depending on the initial selection of cluster centroids. To improve the k-means algorithm, we present in this paper a border k-means clustering algorithm. It combines concepts from the k-means algorithm with an additional focus on the concepts of the borders dividing clusters. Consequently, the resulting border k-means algorithm leads to deterministic results and a great reduction in run time when compared with the traditional k-means algorithm.

Topics & Concepts

Cluster analysisComputer scienceAlgorithmCanopy clustering algorithmCURE data clustering algorithmFocus (optics)Data miningFlexibility (engineering)Data stream clusteringCentroidCluster (spacecraft)Algorithm designCorrelation clusteringArtificial intelligenceMathematicsOpticsStatisticsPhysicsProgramming languageAdvanced Clustering Algorithms Research
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