TL;DR
This paper proves the unconditional local stability of ORGaNICs, a biologically plausible recurrent neural circuit implementing divisive normalization, enabling stable training and improved performance on neural network benchmarks.
Contribution
It establishes the unconditional stability of ORGaNICs with identity weights and demonstrates stable training without gradient issues, linking biological plausibility with effective learning.
Findings
Proves stability of ORGaNICs with identity recurrent weights.
Shows empirical stability in higher dimensions.
Outperforms other neurodynamical models on static image classification.
Abstract
Stability in recurrent neural models poses a significant challenge, particularly in developing biologically plausible neurodynamical models that can be seamlessly trained. Traditional cortical circuit models are notoriously difficult to train due to expansive nonlinearities in the dynamical system, leading to an optimization problem with nonlinear stability constraints that are difficult to impose. Conversely, recurrent neural networks (RNNs) excel in tasks involving sequential data but lack biological plausibility and interpretability. In this work, we address these challenges by linking dynamic divisive normalization (DN) to the stability of ORGaNICs, a biologically plausible recurrent cortical circuit model that dynamically achieves DN and that has been shown to simulate a wide range of neurophysiological phenomena. By using the indirect method of Lyapunov, we prove the remarkable…
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Code & Models
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