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A Near-Optimal Algorithm for Univariate Zeroth-Order Budget Convex Optimization

13 August 2022
F. Bachoc
Tommaso Cesari
Roberto Colomboni
Andrea Paudice
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Abstract

This paper studies a natural generalization of the problem of minimizing a univariate convex function fff by querying its values sequentially. At each time-step ttt, the optimizer can invest a budget btb_tbt​ in a query point XtX_tXt​ of their choice to obtain a fuzzy evaluation of fff at XtX_tXt​ whose accuracy depends on the amount of budget invested in XtX_tXt​ across times. This setting is motivated by the minimization of objectives whose values can only be determined approximately through lengthy or expensive computations. We design an any-time parameter-free algorithm called Dyadic Search, for which we prove near-optimal optimization error guarantees. As a byproduct of our analysis, we show that the classical dependence on the global Lipschitz constant in the error bounds is an artifact of the granularity of the budget. Finally, we illustrate our theoretical findings with numerical simulations.

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