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UHC - A Massively Parallel and Distributed Realisation of Hierarchical Classifier Networks
Taipei, Taiwan December 18-December 20
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/ISPAN.1997.6450911997 International Symposium on Paral ...
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K.P. Lam, University of Keele
In an earlier work on the design of fine-grain, scalable classifiers for massively parallel computers, the technique of unifying cascaded networks has been demonstrated. This paper further examines the method adopted using a highly parallel processing architecture, entitled Unified Hierarchical Classifiers (UHC), based on the principles of Generalized Regression Neural Networks (GRNN). As with the GRNN, it has been shown that the resulting classification network can be implemented efficiently on general-purpose multiprocessor platforms without dedicated hardware for processor interconnections. Adding to this the structural simplicity, and the demonstrable potential for an effective distributed realization on the Cray T3D, will make UHC an attractive classifier architecture in practical applications.
Citation:
K.P. Lam, "UHC - A Massively Parallel and Distributed Realisation of Hierarchical Classifier Networks," ispan, pp.186, 1997 International Symposium on Parallel Architectures, Algorithms and Networks (ISPAN '97), 1997
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