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首页> 外文期刊>Journal of Optimization Theory and Applications >Simultaneous Perturbation Newton Algorithms for Simulation Optimization
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Simultaneous Perturbation Newton Algorithms for Simulation Optimization

机译:同时摄动牛顿算法的仿真优化

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We present a new Hessian estimator based on the simultaneous perturbation procedure, that requires three system simulations regardless of the parameter dimension. We then present two Newton-based simulation optimization algorithms that incorporate this Hessian estimator. The two algorithms differ primarily in the manner in which the Hessian estimate is used. Both our algorithms do not compute the inverse Hessian explicitly, thereby saving on computational effort. While our first algorithm directly obtains the product of the inverse Hessian with the gradient of the objective, our second algorithm makes use of the Sherman-Morrison matrix inversion lemma to recursively estimate the inverse Hessian. We provide proofs of convergence for both our algorithms. Next, we consider an interesting application of our algorithms on a problem of road traffic control. Our algorithms are seen to exhibit better performance than two Newton algorithms from a recent prior work.
机译:我们提出了一种基于同时扰动过程的新的Hessian估计器,无论参数尺寸如何,都需要进行三个系统仿真。然后,我们提出了两种基于牛顿的仿真优化算法,这些算法结合了该Hessian估计量。两种算法的主要区别在于使用Hessian估计的方式不同。我们的两种算法都没有显式计算逆Hessian,从而节省了计算量。虽然我们的第一个算法直接获得反黑森州与目标的梯度的乘积,但我们的第二个算法利用Sherman-Morrison矩阵反位引理来递归估计反黑森州。我们提供了两种算法的收敛性证明。接下来,我们考虑将我们的算法有趣地应用于道路交通控制问题。与最近的先前工作相比,我们的算法表现出比两种牛顿算法更好的性能。

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