On parity problems and the functional-link artificial neural network |
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Authors: | N. C. Steele J. H. Tabor |
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Affiliation: | (1) Division of Mathematics, Coventry University, Priory Street, CV1 5FB Coventry, UK |
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Abstract: | This paper contains the proof of a theorem on the capability of functional-link artificial neural networks both to represent and to learn the n-dimensional parity problem. The result is obtained by an embedding of the problem into a space of dimension 2n — 1. It is shown that the Volterra expansion of the data in n-dimensions provides the necessary transformation. By computing the parity function, it is shown that a suitable set of neural network weights can be deduced. Finally, it is demonstrated that 2n — 1 is the minimum embedding dimension for the problem.The contribution of A Zuderell of the University of Innsbruck is acknowledged. |
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Keywords: | Neural Networks Functional link networks Volterra expansions Embedding Parity problems |
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