The paper establishes regret bounds for mean-field neural network dynamics in continuous-time diffusion settings, yielding constant static regret under displacement convexity and explicit linear regret bounds in the general non-convex case.
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2026 1verdicts
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Continuous-time Online Learning via Mean-Field Neural Networks: Regret Analysis in Diffusion Environments
The paper establishes regret bounds for mean-field neural network dynamics in continuous-time diffusion settings, yielding constant static regret under displacement convexity and explicit linear regret bounds in the general non-convex case.