Phase Transitions in the Fluctuations of Functionals of Random Neural Networks
arXiv stat.ML / 4/22/2026
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Key Points
- The paper proves central and non-central limit theorems for functionals derived from the Gaussian output of infinitely wide random neural networks on a d-dimensional sphere.
- It shows that as network depth increases, the limiting behavior of these functionals depends critically on the fixed points of the covariance function.
- Three distinct asymptotic regimes are identified: convergence to the same functional of a limiting Gaussian field, convergence to a Gaussian distribution, and convergence to a distribution in the Qth Wiener chaos.
- The authors combine established methods such as Hermite expansions, diagram formulas, and Stein–Malliavin techniques with new ideas based on the fixed-point structure and stability of an iterative covariance operator.
- The work is an arXiv (v1) preprint announcement, contributing theoretical insights into fluctuation phenomena in random neural networks rather than a new product or system.
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