Journal of Applied Science and Engineering

Published by Tamkang University Press

1.30

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1.60

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Ching-Ming Chao This email address is being protected from spambots. You need JavaScript enabled to view it.1 and Guan-Lin Chao2

1Department of Computer Science and Information Management, Soochow University, Taipei, Taiwan 100, R.O.C.
2Department of Electrical Engineering, National Taiwan University, Taipei, Taiwan 106, R.O.C.


 

Received: September 9, 2010
Accepted: March 11, 2011
Publication Date: December 1, 2011

Download Citation: ||https://doi.org/10.6180/jase.2011.14.4.10  


ABSTRACT


Data stream mining has attracted much research attention from the data mining community. With the advance of wireless networks and mobile devices, the concept of ubiquitous data mining has been proposed. However, mobile devices are resource-constrained, which makes data stream mining a greater challenge. In this paper, we propose the RA-HCluster algorithm that can be used in mobile devices for clustering stream data. It adapts algorithm settings and compresses stream data based on currently available resources, so that mobile devices can continue with clustering at acceptable accuracy even under low memory resources. Experimental results show that not only is RA-HCluster more accurate than RA-VFKM, it is able to maintain a low and stable memory usage.


Keywords: Data Mining, Data Streams, Clustering, Ubiquitous Data Mining


REFERENCES


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