Hebbian Learning in Networks of Spiking Neurons Using Temporal Coding

نویسندگان

  • Berthold Ruf
  • Michael Schmitt
چکیده

Computational tasks in biological systems that require short response times can be implemented in a straightforward way by networks of spiking neurons that encode analogue values in temporal coding. We investigate the question how spiking neurons can learn on the basis of diierences between ring times. In particular, we provide learning rules of the Hebbian type in terms of single spiking events of the pre-and post-synaptic neuron and show that the weights approach some value given by the diierence between pre-and postsynaptic ring times with arbitrary high precision. Our learning rules give rise to a straightforward possibility for realizing very fast pattern analysis tasks with spiking neurons.

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تاریخ انتشار 1997