Open Access
Knowledge extraction from a mixed transfer function artificial neural network
M. Imad Khan,Yakov Frayman,Saeid Nahavandi +2 more
- 01 Jan 2004
- pp 1-6
1
TL;DR: In this paper, a Mixed Transfer Function Artificial Neural Network (MTFANN) is proposed to obtain high level knowledge and similar generalization comparatively to monotransfer function nets in a global optimization context.
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Abstract: One of the big problems with Artificial Neural Networks (ANN) is that their results are not intuitively clear. For example, if we use the traditional neurons, with a sigmoid activation function, we can approximate any function, including linear functions, but the coefficients (weights) in this approximation will be rather meaningless. To resolve this problem, this paper presents a novel kind of ANN with different transfer functions mixed together. The aim of such a network is to i) obtain a better generalization than current networks ii) to obtain knowledge from the networks without a sophisticated knowledge extraction algorithm iii) to increase the understanding and acceptance of ANNs. Transfer Complexity Ratio is defined to make a sense of the weights associated with the network. The paper begins with a review of the knowledge extraction from ANNs and then presents a Mixed Transfer Function Artificial Neural Network (MTFANN). A MTFANN contains different transfer functions mixed together rather than mono-transfer functions. This mixed presence has helped to obtain high level knowledge and similar generalization comparatively to monotransfer function nets in a global optimization context.
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Citations
•Dissertation
Combined artificial intelligence behaviour systems in serious gaming
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1
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