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Surrogate-Based Promising Area Search for Lipschitz Continuous Simulation Optimization

机译:基于代理的有​​希望区域搜索以进行Lipschitz连续仿真优化

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摘要

We propose an adaptive search algorithm for solving simulation optimization problems with Lipschitz continuous objective functions. The method combines the strength of several popular strategies in simulation optimization. It employs the shrinking ball method to estimate the performance of sampled solutions and uses the performance estimates to fit a surrogate model that iteratively approximates the response surface of the objective function. The search for improved solutions at each iteration is then based on sampling from a promising region (a subset of the decision space) adaptively constructed to contain the point that optimizes the surrogate model. Under appropriate conditions, we show that the algorithm converges to the set of local optimal solutions with probability one. A computational study is also carried out to illustrate the algorithm and to compare its performance with some of the existing procedures.
机译:我们提出了一种自适应搜索算法,用于解决具有Lipschitz连续目标函数的仿真优化问题。该方法结合了几种流行的策略在仿真优化中的优势。它采用收缩球法来估计采样解决方案的性能,并使用性能估计来拟合替代模型,该模型迭代地逼近目标函数的响应面。然后,在每次迭代中寻求改进的解决方案都是基于从有希望的区域(决策空间的一个子集)采样而来的,该采样被自适应地构建为包含优化代理模型的点。在适当的条件下,我们证明该算法以概率为1收敛到局部最优解集。还进行了计算研究,以说明该算法并将其性能与某些现有过程进行比较。

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