Collective Stability of Networks of Winner-Take-All Circuits

@article{Rutishauser2011CollectiveSO,
  title={Collective Stability of Networks of Winner-Take-All Circuits},
  author={Ueli Rutishauser and Rodney J. Douglas and Jean-Jacques E. Slotine},
  journal={Neural Computation},
  year={2011},
  volume={23},
  pages={735-773}
}
  • Ueli Rutishauser, Rodney J. Douglas, Jean-Jacques E. Slotine
  • Published 2011
  • Computer Science, Medicine, Biology, Physics, Mathematics
  • Neural Computation
  • The neocortex has a remarkably uniform neuronal organization, suggesting that common principles of processing are employed throughout its extent. In particular, the patterns of connectivity observed in the superficial layers of the visual cortex are consistent with the recurrent excitation and inhibitory feedback required for cooperative-competitive circuits such as the soft winner-take-all (WTA). WTA circuits offer interesting computational properties such as selective amplification, signal… CONTINUE READING

    Topics from this paper.

    Citations

    Publications citing this paper.
    SHOWING 1-10 OF 51 CITATIONS, ESTIMATED 92% COVERAGE

    Competition Through Selective Inhibitory Synchrony

    VIEW 14 EXCERPTS
    CITES BACKGROUND & METHODS

    Solving Constraint-Satisfaction Problems with Distributed Neocortical-Like Neuronal Networks

    VIEW 3 EXCERPTS
    CITES BACKGROUND & METHODS

    Mechanisms of Winner-Take-All and Group Selection in Neuronal Spiking Networks

    • Yanqing Chen
    • Computer Science, Medicine
    • Front. Comput. Neurosci.
    • 2017
    VIEW 3 EXCERPTS
    CITES BACKGROUND

    Versatile networks of simulated spiking neurons displaying winner-take-all behavior

    VIEW 2 EXCERPTS
    CITES BACKGROUND
    HIGHLY INFLUENCED

    Real-time inference in a VLSI spiking neural network

    VIEW 1 EXCERPT

    Computation in Dynamically Bounded Asymmetric Systems

    VIEW 6 EXCERPTS
    CITES BACKGROUND

    Selective Positive–Negative Feedback Produces the Winner-Take-All Competition in Recurrent Neural Networks

    VIEW 1 EXCERPT
    CITES BACKGROUND

    FILTER CITATIONS BY YEAR

    2011
    2020

    CITATION STATISTICS

    • 2 Highly Influenced Citations

    References

    Publications referenced by this paper.
    SHOWING 1-10 OF 79 REFERENCES

    State-Dependent Computation Using Coupled Recurrent Networks

    VIEW 6 EXCERPTS

    On the Computational Power of Winner-Take-All

    • Wolfgang Maass
    • Computer Science, Medicine, Mathematics
    • Neural Computation
    • 2000
    VIEW 1 EXCERPT

    Computational Aspects of Feedback in Neural Circuits

    Complex dynamics in winner-take-all neural nets with slow inhibition

    VIEW 2 EXCERPTS

    On the piecewise analysis of networks of linear threshold neurons

    VIEW 2 EXCERPTS

    Auditory Cortical Contrast Enhancing by Global Winner-Take-All Inhibitory Interactions

    VIEW 4 EXCERPTS
    HIGHLY INFLUENTIAL

    State-dependent sensory processing in networks of VLSI spiking neurons