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首页> 外文期刊>Journal of Optimization Theory and Applications >A Level-Value Estimation Method and Stochastic Implementation for Global Optimization
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A Level-Value Estimation Method and Stochastic Implementation for Global Optimization

机译:全局优化的水平值估计方法和随机实现

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In this paper, we propose a new method, namely the level-value estimation method, for finding global minimizer of continuous optimization problem. For this purpose, we define the variance function and the mean deviation function, both depend on a level value of the objective function to be minimized. These functions have some good properties when Newton's method is used to solve a variance equation resulting by setting the variance function to zero. We prove that the largest root of the variance equation equals the global minimal value of the corresponding optimization problem. We also propose an implementable algorithm of the level-value estimation method where importance sampling is used to calculate integrals of the variance function and the mean deviation function. The main idea of the cross-entropy method is used to update the parameters of sample distribution at each iteration. The implementable level-value estimation method has been verified to satisfy the convergent conditions of the inexact Newton method for solving a single variable nonlinear equation. Thus, convergence is guaranteed. The numerical results indicate that the proposed method is applicable and efficient in solving global optimization problems.
机译:本文提出了一种新的方法,即水平值估计法,用于寻找连续优化问题的全局极小值。为此,我们定义方差函数和均值偏差函数,它们均取决于要最小化的目标函数的水平值。当使用牛顿法求解通过将方差函数设置为零而产生的方差方程时,这些函数具有某些良好的属性。我们证明方差方程的最大根等于相应优化问题的全局最小值。我们还提出了一种级别值估计方法的可实现算法,该算法使用重要性采样来计算方差函数和均值偏差函数的积分。交叉熵方法的主要思想是用于在每次迭代时更新样本分布的参数。已经验证了可实现的水平值估计方法满足求解单个变量非线性方程的不精确牛顿法的收敛条件。因此,保证了收敛。数值结果表明,该方法适用于解决全局优化问题。

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