The Cost of Robustness: Tighter Bounds on Parameter Complexity for Robust Memorization in ReLU Nets

Abstract

We study the parameter complexity of robust memorization for ReLU networks: the number of parameters required to interpolate any given dataset with ε-separation between differently labeled points, while ensuring predictions remain consistent within a μ-ball around each training sample. We establish upper and lower bounds on the parameter count as a function of the robustness ratio = μ / ε. Unlike prior work, we provide a fine-grained analysis across the entire range ∈ (0,1) and obtain tighter upper and lower bounds that improve upon existing results. Our findings reveal that the parameter complexity of robust memorization matches that of non-robust memorization when is small, but grows with increasing .

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