资源论文Optimistic Optimization of a Deterministic Function without the Knowledge of its Smoothness

Optimistic Optimization of a Deterministic Function without the Knowledge of its Smoothness

2020-01-08 | |  78 |   41 |   0

Abstract

We consider a global optimization problem of a deterministic function f in a semimetric space, given a finite budget of n evaluations. The function f is assumed to be locally smooth (around one of its global maxima) with respect to a semi-metric ?. We describe two algorithms based on optimistic exploration that use a hierarchical partitioning of the space at all scales. A first contribution is an algorithm, DOO, that requires the knowledge of 图片.png We report a finite-sample performance bound in terms of a measure of the quantity of near-optimal states. We then define a second algorithm, SOO, which does not require the knowledge of the semimetric 图片.png under which f is smooth, and whose performance is almost as good as DOO optimally-fitted.

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