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Convergence properties of the expected improvement algorithm with fixed mean and covariance functions

机译:具有固定均值和协方差函数的期望改进算法的收敛性质

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摘要

This paper deals with the convergence of the expected improvement algorithm, a popular global optimization algorithm based on a Gaussian process model of the function to be optimized. The first result is that under some mild hypotheses on the covariance function k of the Gaussian process, the expected improvement algorithm produces a dense sequence of evaluation points in the search domain, when the function to be optimized is in the reproducing kernel Hilbert space generated by k. The second result states that the density property also holds for P-almost all continuous functions, where P is the (prior) probability distribution induced by the Gaussian process.
机译:本文涉及期望改进算法的收敛性,这是一种基于要优化函数的高斯过程模型的流行的全局优化算法。第一个结果是,在对高斯过程的协方差函数k进行一些适度假设的情况下,当要优化的函数位于由H生成的可再生内核Hilbert空间中时,预期的改进算法会在搜索域中生成密集的评估点序列。 k。第二个结果表明,密度属性对于P几乎所有连续函数都成立,其中P是由高斯过程引起的(先前)概率分布。

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