Jan. 1, 2024, midnight | Benjamin Gess, Sebastian Kassing, Vitalii Konarovskyi

JMLR www.jmlr.org

We propose new limiting dynamics for stochastic gradient descent in the small learning rate regime called stochastic modified flows. These SDEs are driven by a cylindrical Brownian motion and improve the so-called stochastic modified equations by having regular diffusion coefficients and by matching the multi-point statistics. As a second contribution, we introduce distribution dependent stochastic modified flows which we prove to describe the fluctuating limiting dynamics of stochastic gradient descent in the small learning rate - infinite width scaling regime.

diffusion dynamics gradient mean rate small statistics stochastic

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