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A simple and improved algorithm for noisy, convex, zeroth-order optimisation

Alexandra Carpentier
Abstract

In this paper, we study the problem of noisy, convex, zeroth order optimisation of a function ff over a bounded convex set XˉRd\bar{\mathcal X}\subset \mathbb{R}^d. Given a budget nn of noisy queries to the function ff that can be allocated sequentially and adaptively, our aim is to construct an algorithm that returns a point x^Xˉ\hat x\in \bar{\mathcal X} such that f(x^)f(\hat x) is as small as possible. We provide a conceptually simple method inspired by the textbook center of gravity method, but adapted to the noisy and zeroth order setting. We prove that this method is such that the f(x^)minxXˉf(x)f(\hat x) - \min_{x\in \bar{\mathcal X}} f(x) is of smaller order than d2/nd^2/\sqrt{n} up to poly-logarithmic terms. We slightly improve upon existing literature, where to the best of our knowledge the best known rate is in [Lattimore, 2024] is of order d2.5/nd^{2.5}/\sqrt{n}, albeit for a more challenging problem. Our main contribution is however conceptual, as we believe that our algorithm and its analysis bring novel ideas and are significantly simpler than existing approaches.

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