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Collaborating Authors

 Tawel, Raoul


A Hybrid Radial Basis Function Neurocomputer and Its Applications

Neural Information Processing Systems

A neurocomputer was implemented using radial basis functions and a combination of analog and digital VLSI circuits. The hybrid system uses custom analog circuits for the input layer and a digital signal processing board for the hidden and output layers. The system combines the advantages of both analog and digital circuits.


Does the Neuron "Learn" like the Synapse?

Neural Information Processing Systems

An improved learning paradigm that offers a significant reduction in computation timeduring the supervised learning phase is described. It is based on extending the role that the neuron plays in artificial neural systems. Prior work has regarded the neuron as a strictly passive, nonlinear processing element, and the synapse on the other hand as the primary source of information processing and knowledge retention. In this work, the role of the neuron is extended insofar as allowing itsparameters to adaptively participate in the learning phase. The temperature of the sigmoid function is an example of such a parameter.


Does the Neuron "Learn" like the Synapse?

Neural Information Processing Systems

An improved learning paradigm that offers a significant reduction in computation time during the supervised learning phase is described. It is based on extending the role that the neuron plays in artificial neural systems. Prior work has regarded the neuron as a strictly passive, nonlinear processing element, and the synapse on the other hand as the primary source of information processing and knowledge retention. In this work, the role of the neuron is extended insofar as allowing its parameters to adaptively participate in the learning phase. The temperature of the sigmoid function is an example of such a parameter.