Collective stability of networks of winner-take-all circuits
Ueli Rutishauser, Rodney J. Douglas, Jean-Jacques Slotine

TL;DR
This paper analyzes the stability of large networks of winner-take-all circuits in the neocortex, providing conditions for stable, high-gain, multi-stable computational modules using nonlinear contraction theory.
Contribution
It introduces a systematic method to determine stability in large, interconnected WTA networks by approximating cortical modules and applying nonlinear contraction theory.
Findings
Identifies parameter ranges for stable high-gain WTA operation
Demonstrates stability and convergence in large networks of modules
Shows the potential for multi-stable states with persistent activity
Abstract
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 restoration, and decision making. But, these properties depend on the signal gain derived from positive feedback, and so there is a critical trade-off between providing feedback strong enough to support the sophisticated computations, while maintaining overall circuit stability. We consider the question of how to reason about stability in very large distributed networks of such circuits. We approach…
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Taxonomy
TopicsNeural dynamics and brain function · Advanced Memory and Neural Computing · Neural Networks and Reservoir Computing
