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Certificate-Guided Pruning for Stochastic Lipschitz Optimization

About

We study black-box optimization of Lipschitz functions under noisy evaluations. Existing adaptive discretization methods implicitly avoid suboptimal regions but do not provide explicit certificates of optimality or measurable progress guarantees. We introduce \textbf{Certificate-Guided Pruning (CGP)}, which maintains an explicit \emph{active set} $A_t$ of potentially optimal points via confidence-adjusted Lipschitz envelopes. Any point outside $A_t$ is certifiably suboptimal with high probability, and under a margin condition with near-optimality dimension $\alpha$, we prove $\Vol(A_t)$ shrinks at a controlled rate yielding sample complexity $\tildeO(\varepsilon^{-(2+\alpha)})$. We develop three extensions: CGP-Adaptive learns $L$ online with $O(\log T)$ overhead; CGP-TR scales to $d > 50$ via trust regions with local certificates; and CGP-Hybrid switches to GP refinement when local smoothness is detected. Experiments on 12 benchmarks ($d \in [2, 100]$) show CGP variants match or exceed strong baselines while providing principled stopping criteria via certificate volume.

Ibne Farabi Shihab, Sanjeda Akter, Anuj Sharma• 2026

Related benchmarks

TaskDatasetResultRank
Stochastic Lipschitz OptimizationBranin
Simple Regret0.014
10
Stochastic Lipschitz OptimizationRosenbrock
Simple Regret0.034
10
Stochastic Lipschitz OptimizationSVM
Simple Regret0.026
10
Stochastic Lipschitz OptimizationNeedle
Simple Regret0.011
9
Stochastic Lipschitz OptimizationHartmann
Simple Regret (x10^-2)0.027
9
Stochastic Lipschitz OptimizationAckley
Simple Regret0.078
9
Stochastic Lipschitz OptimizationLevy
Simple Regret0.035
9
Stochastic Lipschitz OptimizationHartmann-6
Regret (x10^-2)0.027
7
Stochastic Lipschitz OptimizationNeedle-2D--
1
Stochastic Lipschitz OptimizationAckley-10--
1
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