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(Neural Computation. 2005;18:1-9.)
© 2005 The MIT Press


Note

Mixture Models Based on Neural Network Averaging

Walter W. Focke

walter.focke{at}up.ac.za, Institute of Applied Materials, Department of Chemical Engineering, University of Pretoria, Pretoria 0001, South Africa

A modified version of the single hidden-layer perceptron architecture is proposed for modeling mixtures. A particular flexible mixture model is obtained by implementing the Box-Cox transformation as transfer function. In this case, the network response can be expressed in closed form as a weighted power mean. The quadratic Scheffé K-polynomial and the exponential Wilson equation turn out to be special forms of this general mixture model. Advantages of the proposed network architecture are that binary data sets suffice for "training" and that it is readily extended to incorporate additional mixture components while retaining all previously determined weights.







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Copyright © 2005 by The MIT Press.