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Associative learning in a network model of Hermissenda crassicornis
Authors:Susan A. Werness  S. Dale Fay  Kim T. Blackwell  Thomas P. Vogl  Daniel L. Alkon
Affiliation:(1) Environmental Research Institute of Michigan, P.O. Box 134001, 48113-4001 Ann Arbor, MI, USA;(2) Environmental Research Institute of Michigan, 1101 Wilson Blvd., Suite 1100, 22209 Arlington, VA, USA;(3) Laboratory of Adaptive Sciences, National Institute of Neurological Disorders and Stroke, National Institute of Health, 20892 Bethesda, MD, USA
Abstract:A companion paper in a previous issue of this journal presented a resistance-capacitance circuit computer model of the four-neuron visual-vestibular network of the invertebrate marine mollusk Hermissenda crassicornis. In the present paper, we demonstrate that changes in the model's output in response to simulated associative training is quantitatively similar to behavioral and electrophysiological changes in response to associative training of Hermissenda crassicornis. Specifically, the model demonstrates many characteristics of conditioning: sensitivity to stimulus contingency, stimulus specificity, extinction, and savings. The model's learning features also are shown to be devoid of non-associative components. Thus, this computational model is an excellent tool for examining the information flow and dynamics of biological associative learning and for uncovering insights concerning associative learning, memory, and recall that can be applied to the development of artificial neural networks.
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