In this paper, the robustness of the artificial neural networks to noise is demonstrated with a multilayer perceptron, and the reason of robustness is due to the statistical orthogonality among hidden nodes and its hierarchical information extraction capability. Also, the misclassification probability of a well-trained multilayer perceptron is derived without any linear approximations when the inputs are contaminated with random noises. The misclassification probability for a noisy pattern is shown to be a function of the input pattern, noise variances, the weight matrices, and the nonlinear transformations. The result is verified with a handwritten digit recognition problem, which shows better result than that using linear approximations.
CITATION STYLE
Lee, Y., & Oh, S. H. (1994). Input noise immunity of multilayer perceptrons. ETRI Journal, 16(1), 35–43. https://doi.org/10.4218/etrij.94.0194.0013
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