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Improvement of the Fast Clustering Algorithm Improved by <i>K</i> -Means in the Big Data

Ting Xie, Ruihua Liu, Zhengyuan Wei

2020Applied Mathematics and Nonlinear Sciences59 citationsDOIOpen Access PDF

Abstract

Abstract Clustering as a fundamental unsupervised learning is considered an important method of data analysis, and K -means is demonstrably the most popular clustering algorithm. In this paper, we consider clustering on feature space to solve the low efficiency caused in the Big Data clustering by K -means. Different from the traditional methods, the algorithm guaranteed the consistency of the clustering accuracy before and after descending dimension, accelerated K -means when the clustering centeres and distance functions satisfy certain conditions, completely matched in the preprocessing step and clustering step, and improved the efficiency and accuracy. Experimental results have demonstrated the effectiveness of the proposed algorithm.

Topics & Concepts

Cluster analysisCURE data clustering algorithmData stream clusteringCorrelation clusteringCanopy clustering algorithmComputer scienceFuzzy clusteringPreprocessorAlgorithmData miningSingle-linkage clusteringClustering high-dimensional dataDimension (graph theory)Consistency (knowledge bases)Artificial intelligencePattern recognition (psychology)MathematicsPure mathematicsAdvanced Clustering Algorithms ResearchAdvanced Data Compression TechniquesFace and Expression Recognition
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