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Optimal exact experimental designs with correlated errors through a simulated annealing algorithm

机译:通过模拟退火算法优化具有相关误差的精确实验设计

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摘要

Simulated annealing (SA) is a stochastic optimization method with principles taken from the physical process called "annealing" which aims to bring a solid to its ground state or a state of minimum energy. SA is known as a simple heuristic tool suitable for providing direct or approximate solutions to a wide variety of combinatorial problems. This paper is concerned with the problem of determining optimal exact experimental designs with n observations and k two-level factors assuming the existence of correlated errors with a known correlation structure. A simulated annealing algorithm has been developed and applied for the search of D- and A-optimal designs. An extensive discussion regarding the right choices of the initial parameters is presented and a method of self-improvement of the algorithm is suggested via a series of repeated executions. Finally, a version of the SA algorithm is used to find optimal exact designs in the case of continuous observations with known covariance function.
机译:模拟退火(SA)是一种随机优化方法,其原理取自称为“退火”的物理过程,其目的是使固体达到其基态或最小能量状态。 SA被认为是一种简单的启发式工具,适用于为各种组合问题提供直接或近似的解决方案。本文所涉及的问题是,在存在已知相关结构的情况下,假设存在相关误差,利用n个观测值和k个两级因子确定最佳精确实验设计。已开发出一种模拟退火算法,并将其应用于D和A最优设计的搜索。提出了有关正确选择初始参数的广泛讨论,并通过一系列重复执行提出了一种算法的自我完善方法。最后,在具有已知协方差函数的连续观测的情况下,使用SA算法的一种版本来找到最佳的精确设计。

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