Entropy and Information in Neural Spike Trains

S. P. Strong, Roland Koberle, Rob R. de Ruyter van Steveninck, and William Bialek
Phys. Rev. Lett. 80, 197 – Published 5 January 1998
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Abstract

The nervous system represents time dependent signals in sequences of discrete, identical action potentials or spikes; information is carried only in the spike arrival times. We show how to quantify this information, in bits, free from any assumptions about which features of the spike train or input signal are most important, and we apply this approach to the analysis of experiments on a motion sensitive neuron in the fly visual system. This neuron transmits information about the visual stimulus at rates of up to 90 bits/s, within a factor of 2 of the physical limit set by the entropy of the spike train itself.

  • Received 29 February 1996

DOI:

Authors & Affiliations

S. P. Strong1, Roland Koberle1,2, Rob R. de Ruyter van Steveninck1, and William Bialek1

  • 1NEC Research Institute, 4 Independence Way, Princeton, New Jersey 08540
  • 2Department of Physics, Princeton University, Princeton, New Jersey 08544

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Issue

Vol. 80, Iss. 1 — 5 January 1998

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