Abstract
Clustering is one of the better known unsupervised learning methods with the aim of discovering structures in the data. This paper presents a distance-based Sweep-Hyperplane Clustering Algorithm (SHCA), which uses sweep-hyperplanes to quickly locate each point's approximate nearest neighbourhood. Furthermore, a new distance-based dynamic model that is based on 2 N-tree hierarchical space partitioning, extends SHCA's capability for finding clusters that are not well-separated, with arbitrary shape and density. Experimental results on different synthetic and real multidimensional datasets that are large and noisy demonstrate the effectiveness of the proposed algorithm.
Author supplied keywords
Cite
CITATION STYLE
Lukač, N., Žalik, B., & Žalik, K. R. (2014). Sweep-hyperplane clustering algorithm using dynamic model. Informatica (Netherlands), 25(4), 563–580. https://doi.org/10.15388/Informatica.2014.30
Register to see more suggestions
Mendeley helps you to discover research relevant for your work.