A possible means for evaluating the performance of neural networks from a global perspective in parameter-space is suggested. An organized experimental method that identifies network configuration and parameter value choices which are not sensitive to minor variations for a standard training metric is described. Convergence maps are n-dimensional plots which show the ability of a neural network to converge on (learn) a given training metric. The traveling salesman optimization problem is a classic metric for testing energy minimization networks. This metric isa discussed. The technique is illustrated for the network used by J.J Hopfield and D.W. Tank (1985) to solve a traveling salesman problem and with traditional backpropagation as described by R.P Lippmann (1987)
Published in:
Aerospace and Electronics Conference, 1990. NAECON 1990., Proceedings of the IEEE 1990 National
Date of Conference:
21-25 May 1990
- Page(s):
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1151
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1157 vol.3
- Meeting Date :
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21 May 1990-25 May 1990
- INSPEC Accession Number:
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3864015
- Conference Location :
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Dayton, OH
- Digital Object Identifier :
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10.1109/NAECON.1990.112930
- Product Type:
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Conference Publications