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arxiv: 2509.17994 · v3 · submitted 2025-09-22 · 💻 cs.CC · cs.DS· cs.LG

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Supersimulators

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classification 💻 cs.CC cs.DScs.LG
keywords functionregularitytargetboundcharacterizationcomplexitydistinguisherseven
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We prove that every randomized Boolean function admits a supersimulator: a randomized polynomial-size circuit whose output on random inputs cannot be efficiently distinguished from reality with constant advantage, even by polynomially larger distinguishers. Our result builds on the landmark complexity-theoretic regularity lemma of Trevisan, Tulsiani and Vadhan (2009), which, in contrast, provides a simulator that fools smaller distinguishers. We circumvent lower bounds for the simulator size by letting the distinguisher size bound vary with the target function, while remaining below an absolute upper bound independent of the target function. This dependence on the target function arises naturally from our use of an iteration technique originating in the graph regularity literature. The simulators provided by the regularity lemma and recent refinements thereof, known as multiaccurate and multicalibrated predictors, respectively, as per Hebert-Johnson et al. (2018), have previously been shown to have myriad applications in complexity theory, cryptography, learning theory, and beyond. We first show that a recent multicalibration-based characterization of the computational indistinguishability of product distributions actually requires only (calibrated) multiaccuracy. We then show that supersimulators yield an even tighter result in this application domain, closing a complexity gap present in prior versions of the characterization.

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Cited by 2 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Instance-Adaptive Online Multicalibration

    cs.LG 2026-05 conditional novelty 8.0

    A single online multicalibration algorithm adaptively refines a dyadic grid and achieves instance-dependent rates: O(T^{2/3}) worst-case, O(sqrt T) for marginal stochastic data, and O(sqrt(JT)) for J-piecewise station...

  2. The Sample Complexity of Multicalibration

    cs.LG 2026-04 unverdicted novelty 7.0

    Multicalibration has minimax sample complexity Θ̃(ε^{-3}) when the number of groups is at most ε^{-κ} for fixed κ>0, versus Θ̃(ε^{-2}) for marginal calibration, with a sharp threshold at κ=0.