Title :
Online stream clustering using density and affinity propagation algorithm
Author :
Jian-Peng Zhang ; Fu-Cai Chen ; Li-Xiong Liu ; Shao-Mei Li
Author_Institution :
China Nat. Digital Switching Syst. Eng. & Technol. R&D Center, Zhengzhou, China
Abstract :
In order to improve the data stream clustering accuracy and effectiveness, the paper proposes an efficient data stream clustering algorithm based on affinity propagation and density methods (APDenStream). The algorithm adopts online/offline two stage process framework, by using micro-cluster decay density to reflect the evolution information and using online dynamic delete mechanism to maintain micro-cluster, it makes the algorithm model more consistent with the intrinsic data stream characteristics, simultaneously, The algorithm also takes advantage of the WAP algorithm which detects new class patterns merged into the clustering model. The experimental results show that this algorithm has good applicability, efficiency and extensibility and can get better clustering effect.
Keywords :
data mining; pattern clustering; APDenStream; WAP algorithm; affinity propagation algorithm; change detection; class patterns; data mining; data stream clustering accuracy improvement; data stream clustering effectiveness improvement; density propagation algorithm; intrinsic data stream characteristics; microcluster decay density; online dynamic delete mechanism; online stream clustering; Computers; MATLAB; Noise measurement; Affinity propagation; Change detection; Data mining; Data stream; Density clustering;
Conference_Titel :
Software Engineering and Service Science (ICSESS), 2013 4th IEEE International Conference on
Conference_Location :
Beijing
Print_ISBN :
978-1-4673-4997-0
DOI :
10.1109/ICSESS.2013.6615433