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Improving the Orthogonal Range Search k -Windows Algorithm
Washington, DC November 04-November 06
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/TAI.2002.118081014th IEEE International Conference on ...
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P. Alevizos, University of Patras
B. Boutsinas, University of Patras
D. Tasoulis, University of Patras
M. N. Vrahatis, University of Patras
Clustering, that is the partitioning of a set of patterns into disjoint and homogeneous meaningful groups (clusters), is a fundamental process in the practice of science. k -windows is an efficient clustering algorithm that reduces the number of patterns that need to be examined for similarity, using a windowing technique. It exploits well known spatial data structures, namely the range tree, that allows fast range searches. From a theoretical standpoint, the k -windows algorithm is characterized by lower time complexity compared to other well-known clustering algorithms. Moreover, it achieves high quality clustering results. However, it appears that it cannot be directly applicable in high-dimensional settings due to the superlinear space requirements for the range tree. In this paper, an improvement of the k -windows algorithm, aiming at resolving this defficiency, is presented. The improvement is based on an alternative solution to the orthogonal range search problem.
Citation:
P. Alevizos, B. Boutsinas, D. Tasoulis, M. N. Vrahatis, "Improving the Orthogonal Range Search k -Windows Algorithm," ictai, pp.239, 14th IEEE International Conference on Tools with Artificial Intelligence (ICTAI'02), 2002
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