DocumentCode
1902989
Title
Hierarchical ensemble of neural networks
Author
Poddar, Pinaki ; Rao, P.V.S.
Author_Institution
Comput. Sci. & Commun. Group, Tata Inst. of Fundamental Res., Bombay, India
fYear
1993
fDate
1993
Firstpage
287
Abstract
The estimation of the a posteriori probability p (c k|x ) given the state conditional probability distribution p (x |c k) and a priori probability p (c k) is the central theme in the Bayesian approach to the pattern classification problem. The a posteriori probability can be expressed in a product form p (g m|x )p (c k|xg m). A classification scheme using a hierarchical ensemble of multilayer perceptrons (MLPs) is proposed based on this idea. This architecture is shown to be equivalent, in principle, to a single-stage MLP classifier. The advantages of the hierarchical ensemble of classifiers become apparent in practice where the probability estimates are computed from a finite set of samples in a finite time with a particular algorithm. With respect to given performance criteria, such as classification accuracy over a disjoint test set, a hierarchical ensemble performs better than an equivalent single-stage classifier, given a limited amount of resources in terms of input data and learning time. Experiments on vowel classification using a hierarchical scheme show these advantages over a single-stage classifier
Keywords
Bayes methods; feedforward neural nets; pattern recognition; probability; Bayesian approach; a posteriori probability; a priori probability; classification accuracy; disjoint test set; hierarchical ensemble; neural networks; pattern classification; single-stage classifier; state conditional probability distribution; vowel classification; Bayesian methods; Computational modeling; Distributed computing; Multilayer perceptrons; Neural networks; Pattern classification; Pattern recognition; Performance evaluation; State estimation; Testing;
fLanguage
English
Publisher
ieee
Conference_Titel
Neural Networks, 1993., IEEE International Conference on
Conference_Location
San Francisco, CA
Print_ISBN
0-7803-0999-5
Type
conf
DOI
10.1109/ICNN.1993.298571
Filename
298571
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