Neuro-evolutionary stochastic architectures in gauge-covariant neural fields
TLDR
This paper introduces a neuro-evolutionary framework for gauge-covariant neural fields, using symmetry-constrained diagnostics to guide architecture search.
Key contributions
- Extends gauge-covariant stochastic neural fields with evolving architecture-level parameters.
- Formulates an effective theory with classical commuting fields for symmetry-constrained diagnostics.
- Introduces a Markovian evolutionary scheme compatible with the local U(1) structure.
- Shows a fully symmetry-constrained U(1) model robustly achieves near-marginal stability.
Why it matters
This work provides a novel approach to designing stable and robust neural architectures by integrating neuro-evolution with gauge-covariant field theory. It highlights the importance of symmetry-guided diagnostics for effective stochastic architecture search, offering principles for controlled settings.
Original Abstract
We extend our gauge-covariant stochastic neural-field framework by promoting architecture-level parameters to slow stochastic variables evolving in function space. Our effective theory is formulated in terms of classical commuting fields and provides symmetry-constrained diagnostics of marginality and finite-width effects through the maximal Lyapunov exponent, the amplification factor, and dressed spectral kernels. On top of this dynamics, we introduce a Markovian evolutionary scheme compatible with the local $U(1)$ structure of the effective model. By using a minimal implementation, the genotype is reduced to the weight-variance parameter $σ_w^2$, and the fitness functional combines spectral agreement, marginal stability, and a symmetry-constrained critical anchor. Comparing three evolutionary models, we find that only the fully symmetry-constrained Ginibre $U(1)$ version robustly approaches a narrow near-marginal regime and reproduces the predicted low-frequency finite-width spectral behavior. These results support the use of symmetry-guided effective stability diagnostics as practical principles for stochastic architecture search in controlled settings.
📬 Weekly AI Paper Digest
Get the top 10 AI/ML arXiv papers from the week — summarized, scored, and delivered to your inbox every Monday.