タイトル | Identification of the connections in biologically inspired neural networks |
本文(外部サイト) | http://hdl.handle.net/2060/19940004365 |
著者(英) | Beale, M.; Hicklin, J.; Demuth, H.; Leung, K. |
著者所属(英) | Idaho Univ. |
発行日 | 1990-11-06 |
言語 | eng |
内容記述 | We developed an identification method to find the strength of the connections between neurons from their behavior in small biologically-inspired artificial neural networks. That is, given the network external inputs and the temporal firing pattern of the neurons, we can calculate a solution for the strengths of the connections between neurons and the initial neuron activations if a solution exists. The method determines directly if there is a solution to a particular neural network problem. No training of the network is required. It should be noted that this is a first pass at the solution of a difficult problem. The neuron and network models chosen are related to biology but do not contain all of its complexities, some of which we hope to add to the model in future work. A variety of new results have been obtained. First, the method has been tailored to produce connection weight matrix solutions for networks with important features of biological neural (bioneural) networks. Second, a computationally efficient method of finding a robust central solution has been developed. This later method also enables us to find the most consistent solution in the presence of noisy data. Prospects of applying our method to identify bioneural network connections are exciting because such connections are almost impossible to measure in the laboratory. Knowledge of such connections would facilitate an understanding of bioneural networks and would allow the construction of the electronic counterparts of bioneural networks on very large scale integrated (VLSI) circuits. |
NASA分類 | CYBERNETICS |
レポートNO | 94N71120 |
権利 | Copyright, Distribution under U.S. Government purpose rights |
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