DocumentCode
1742918
Title
Clustering very large databases using EM mixture models
Author
Bradley, P.S. ; Fayyad, U.M. ; Reina, C.A.
Author_Institution
Microsoft Res., USA
Volume
2
fYear
2000
fDate
2000
Firstpage
76
Abstract
Clustering very large databases is a challenge for traditional pattern recognition algorithms, e.g. the expectation-maximization (EM) algorithm for fitting mixture models, because of high memory and iteration requirements. Over large databases, the cost of the numerous scans required to converge and large memory requirement of the algorithm becomes prohibitive. We present a decomposition of the EM algorithm requiring a small amount of memory by limiting iterations to small data subsets. The scalable EM approach requires at most one database scan and is based on identifying regions of the data that are discardable, regions that are compressible, and regions that must be maintained in memory. Data resolution is preserved to the extent possible based upon the size of the memory buffer and fit of the current model to the data. Computational tests demonstrate that the scalable scheme outperforms similarly constrained EM approaches
Keywords
data mining; maximum likelihood estimation; pattern clustering; probability; very large databases; data resolution; data summarisation; expectation-maximization mixture models; model estimation; very large databases; Clustering algorithms; Costs; Data mining; Distributed databases; Machine learning algorithms; Maximum likelihood estimation; Pattern recognition; Probability density function; Read-write memory; Visual databases;
fLanguage
English
Publisher
ieee
Conference_Titel
Pattern Recognition, 2000. Proceedings. 15th International Conference on
Conference_Location
Barcelona
ISSN
1051-4651
Print_ISBN
0-7695-0750-6
Type
conf
DOI
10.1109/ICPR.2000.906021
Filename
906021
Link To Document