Moerland, PerryFiesler, EmileSaxena, Indu2006-03-102006-03-102006-03-101995https://infoscience.epfl.ch/handle/20.500.14299/227548Sigmoid-like activation functions implemented in analog hardware differ in various ways from the standard sigmoidal function as they are asymmetric, truncated, and have a non-standard gain. It is demonstrated how one can adapt the backpropagation learning rule to compensate for these non-standard sigmoids as available in hardware. This method is applied to multilayer neural networks with all-optical forward propagation and liquid crystal light valves (LCLV) as optical thresholding devices. In this paper the results of software simulations of a backpropagation neural network with five different LCLV activation functions are presented and it is shown that the adapted learning rule performs well with these LCLV curvesneuronlearningThe Effects of Optical Thresholding in Backpropagation Neural Networkstext::conference output::conference proceedings::conference paper