DocumentCode
3061953
Title
Clustering using a coarse-grained parallel genetic algorithm: a preliminary study
Author
Ratha, Nalini K. ; Jain, Anil K. ; Chung, Moon J.
Author_Institution
Dept. of Comput. Sci., Michigan State Univ., East Lansing, MI, USA
fYear
1995
fDate
18-20 Sep 1995
Firstpage
331
Lastpage
338
Abstract
Genetic algorithms (GA) are useful in solving complex optimization problems. By posing pattern clustering as an optimization problem, GAs can be used to obtain optimal minimum squared error partitions. In order to improve the total execution time, a distributed algorithm has been developed using the divide and conquer approach. Using a standard communication library called PVM, the distributed algorithm has been implemented on a workstation cluster: the GA approach gives better quality clusters for many data sets compared to a standard K-means clustering algorithm. We have achieved a near linear speedup for the distributed implementation
Keywords
distributed algorithms; divide and conquer methods; genetic algorithms; pattern recognition; problem solving; GAs; PVM; coarse grained parallel genetic algorithm; coarse-grained parallel genetic algorithm; complex optimization problems; data sets; distributed algorithm; distributed implementation; divide and conquer approach; near linear speedup; optimal minimum squared error partition; optimization problem; pattern clustering; preliminary study; standard K-means clustering algorithm; standard communication library; workstation cluster; Clustering algorithms; Computer science; Data analysis; Genetic algorithms; Labeling; Libraries; Moon; Partitioning algorithms; Scattering; Workstations;
fLanguage
English
Publisher
ieee
Conference_Titel
Computer Architectures for Machine Perception, 1995. Proceedings. CAMP '95
Conference_Location
Como
Print_ISBN
0-8186-7134-3
Type
conf
DOI
10.1109/CAMP.1995.521057
Filename
521057
Link To Document