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Bartlett, E.B.; Uhrig, R.E.
Tennessee Univ., Knoxville, TN (United States). Dept. of Nuclear Engineering. Funding organisation: USDOE, Washington, DC (United States)1992
Tennessee Univ., Knoxville, TN (United States). Dept. of Nuclear Engineering. Funding organisation: USDOE, Washington, DC (United States)1992
AbstractAbstract
[en] The random optimization method typically uses a Gaussian probability density function (PDF) to generate a random search vector. In this paper the random search technique is applied to the neural network training problem and is modified to dynamically seek out the optimal probability density function (OPDF) from which to select the search vector. The dynamic OPDF search process, combined with an auto-adaptive stratified sampling technique and a dynamic node architecture (DNA) learning scheme, completes the modifications of the basic method. The DNA technique determines the appropriate number of hidden nodes needed for a given training problem. By using DNA, researchers do not have to set the neural network architectures before training is initiated. The approach is applied to networks of generalized, fully interconnected, continuous perceptions. Computer simulation results are given
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1992; 7 p; WNN-92: workshop on neural networks; Alburn, AL (United States); 10-12 Feb 1992; CONTRACT FG07-88ER12824; OSTI as DE93003555; NTIS; INIS; US Govt. Printing Office Dep
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