Robust stochastic resonance for simple threshold neurons.

@article{Kosko2004RobustSR,
  title={Robust stochastic resonance for simple threshold neurons.},
  author={Bart Kosko and Sanya Mitaim},
  journal={Physical review. E, Statistical, nonlinear, and soft matter physics},
  year={2004},
  volume={70 3 Pt 1},
  pages={
          031911
        }
}
Simulation and theoretical results show that memoryless threshold neurons benefit from small amounts of almost all types of additive noise and so produce the stochastic-resonance or SR effect. Input-output mutual information measures the performance of such threshold systems that use subthreshold signals. The SR result holds for all possible noise probability density functions with finite variance. The only constraint is that the noise mean must fall outside a "forbidden" threshold-related… CONTINUE READING

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