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Bayesian Optimization Meets Search Based Optimization: A Hybrid Approach for Multi-Fidelity Optimization

机译:贝叶斯优化符合基于搜索的优化:多保真优化的混合方法

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摘要

Many real-life problems require optimizing functions with expensive evaluations. Bayesian Optimization (BO) and Search-based Optimization (SO) are two broad families of algorithms that try to find the global optima of a function with the goal of minimizing the number of function evaluations. A large body of existing work deals with the single-fidelity setting, where function evaluations are very expensive but accurate. However, in many applications, we have access to multiple-fidelity functions that vary in their cost and accuracy of evaluation. In this paper, we propose a novel approach called Multi-fidelity Hybrid (MF-Hybrid) that combines the best attributes of both BO and SO methods to discover the global optima of a black-box function with minimal cost. Our experiments on multiple benchmark functions show that the MF-Hybrid algorithm outperforms existing single-fidelity and multi-fidelity optimization algorithms.
机译:许多现实生活中的问题需要优化具有昂贵评估的功能。 贝叶斯优化(BO)和基于搜索的优化(SO)是两种广泛的算法系列,试图找到功能的全局最佳函数,以最小化函数评估的数量。 现有工作的大量现有工作处理单一保真设置,其中功能评估非常昂贵但准确。 但是,在许多应用中,我们可以访问以其成本和评估准确性而变化的多保真度功能。 在本文中,我们提出了一种称为多保真杂交(MF-Hybrid)的新方法,该方法结合了BO的最佳属性,因此可以使用最小的成本来发现黑盒功能的全局最佳变量。 我们对多个基准函数的实验表明,MF-Hybrid算法优于现有的单一保真度和多保真优化算法。

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