Accuracy effects in pattern recognition neural nets
暂无分享,去创建一个
Various errors, including analog accuracy, nonlinearities, and noise, are present in all neural networks. The author considers their effects in training and testing on two different pattern recognition neural nets. He shows that the neural nets considered allow some such effects to be included inherently in the neural net synthesis algorithm and that the effect of the other error sources can be trained out by proper selection of neural net design parameters. Multiclass distortion-invariant pattern recognition neural nets are considered. The results are applicable to analog VLSI and optical neural nets.<<ETX>>
[1] D P Casasent,et al. Adaptive-clustering optical neural net. , 1990, Applied optics.
[2] Etienne Barnard,et al. Adaptive clustering neural net for piecewise nonlinear discriminant surfaces , 1990, 1990 IJCNN International Joint Conference on Neural Networks.
[3] David Casasent,et al. High capacity pattern recognition associative processors , 1992, Neural Networks.
[4] D P Casasent,et al. Ho-Kashyap optical associative processors. , 1990, Applied optics.