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Average Performance Of Monte Carlo And Quasi-monte Carlo Methods For Global Optimization

机译:全局优化的蒙特卡洛和拟蒙特卡洛方法的平均性能

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Passive algorithms for global optimization of a function choose observation points independently of past observed values. We study the average performance of two common passive algorithms, where the average ith respect to a probability on a function space We consider the case where the probability is on smooth functions, and compare the results to the case where the probability is on non-differentiable functions. The first algorithm chooses equally spaced observation points, while the second algorithm chooses the observation points independently and uniformly distributed. The average convergence rate is derived for both algorithms.
机译:用于函数全局优化的被动算法独立于过去的观测值来选择观测点。我们研究了两种常见的无源算法的平均性能,其中,第i个均与函数空间上的概率有关。我们考虑概率在光滑函数上的情况,并将结果与​​概率在不可微情况下的情况进行比较功能。第一种算法选择等距的观察点,而第二种算法则独立且均匀地选择观察点。两种算法都得出了平均收敛速度。

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