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Random ReLU Neural Networks as Non-Gaussian Processes

R. Parhi, P. Bohra, A. El Biari, M. Pourya, M. Unser

Journal of Machine Learning Research, vol. 26, no. 19, pp. 1–31, 2025.


We consider a large class of shallow neural networks with randomly initialized parameters and rectified linear unit activation functions. We prove that these random neural networks are well-defined non-Gaussian processes. As a by-product, we demonstrate that these networks are solutions to stochastic differential equations driven by impulsive white noise (combinations of random Dirac measures). These processes are parameterized by the law of the weights and biases as well as the density of activation thresholds in each bounded region of the input domain. We prove that these processes are isotropic and wide-sense self-similar with Hurst exponent 3∕2. We also derive a remarkably simple closed-form expression for their autocovariance function. Our results are fundamentally different from prior work in that we consider a non-asymptotic viewpoint: The number of neurons in each bounded region of the input domain (i.e., the width) is itself a random variable with a Poisson law with mean proportional to the density parameter. Finally, we show that, under suitable hypotheses, as the expected width tends to infinity, these processes can converge in law not only to Gaussian processes, but also to non-Gaussian processes depending on the law of the weights. Our asymptotic results provide a new take on several classical results (wide networks converge to Gaussian processes) as well as some new ones (wide networks can converge to non-Gaussian processes).

@ARTICLE(http://bigwww.epfl.ch/publications/parhi2502.html,
AUTHOR="Parhi, R. and Bohra, P. and El Biari, A. and Pourya, M. and
	Unser, M.",
TITLE="Random {ReLU} Neural Networks as Non-{G}aussian Processes",
JOURNAL="Journal of Machine Learning Research",
YEAR="2025",
volume="26",
number="19",
pages="1--31",
month="",
note="")
© 2025 The Authors. Personal use of this material is permitted. However, permission to reprint/republish this material for advertising or promotional purposes or for creating new collective works for resale or redistribution to servers or lists, or to reuse any copyrighted component of this work in other works must be obtained from The Authors. This material is presented to ensure timely dissemination of scholarly and technical work. Copyright and all rights therein are retained by authors or by other copyright holders. All persons copying this information are expected to adhere to the terms and constraints invoked by each author's copyright. In most cases, these works may not be reposted without the explicit permission of the copyright holder.
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