On the Relevance of Time in Neural Computation and Learning
Abstract
We discuss models for computation in biological neural systems that
are based on the current state of knowledge in neurophysiology. Differences and
similarities to traditional neural network models are highlighted. It turns
out that many important questions regarding computation and learning in
biological neural systems cannot be adequately addressed in traditional
neural network models. In particular the role of time is quite different in
biologically more realistic models, and many fundamental questions
regarding computation and learning have to be rethought for this
context. Simultaneously a new generation of VLSI-chips is emerging
(``pulsed VLSI'') where new ideas about computing and learning with
temporal coding can be tested.
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