DocumentCode :
2770781
Title :
Multi-objective genetic algorithm partitioning for hierarchical learning of high dimensional spaces
Author :
Kumar, Rajeev ; Rockett, Peter
Author_Institution :
Dept. of Electron. & Electr. Eng., Sheffield Univ., UK
fYear :
1997
fDate :
35487
Firstpage :
42522
Lastpage :
42527
Abstract :
Complex pattern recognition problems of high dimensionality are best addressed through a ´divide-and-conquer´ approach rather than monolithically. We introduce a novel approach to partitioning the pattern space into hyperspheres using a multiobjective genetic algorithm for subsequent mapping onto a hierarchical neural network for subspace learning. In our technique clusters are generated on the basis of ´fitness for purpose´-they are explicitly optimised for their subsequent mapping onto the hierarchical classifier-rather than emerging as some implicit property of the clustering algorithm. Multi-objective genetic algorithms perform optimisation on a vector space of objectives and are able to explore the NP-complete search space for a set of equally viable partitions of the pattern space. The rationale behind this strategy is set-out and the objectives used for (near-) optimum partitioning of feature spaces for hierarchical learning are identified. Implementation details are described in brief and results presented for both high dimensional synthetic and real data
Keywords :
pattern recognition; NP-complete search space; clustering; complex pattern recognition problems; divide-and-conquer approach; hierarchical classifier; hierarchical learning; hierarchical neural network; high-dimensional spaces; hyperspheres; multiobjective genetic algorithm; near-optimum partitioning; pattern space partitioning;
fLanguage :
English
Publisher :
iet
Conference_Titel :
Pattern Recognition (Digest No. 1997/018), IEE Colloquium on
Conference_Location :
London
Type :
conf
DOI :
10.1049/ic:19970129
Filename :
598541
Link To Document :
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