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Linearly constrained global optimization and stochastic differential equations

机译:线性约束全局优化和随机微分方程

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A stochastic algorithm is proposed for the global optimization of non-convex functions subject to linear constraints. Our method follows the trajectory of an appropriately defined Stochastic Differential Equation (SDE). The feasible set is assumed to be comprised of linear equality constraints, and possibly box constraints. Feasibility of the trajectory is achieved by projecting its dynamics onto the set defined by the linear equality constraints. A barrier term is used for the purpose of forcing the trajectory to stay within the box constraints. Using Laplace's method we give a characterization of a probability measure (Π) that is defined on the set of global minima of the problem. We then study the transition density associated with the projected diffusion process and show that its weak limit is given by n. Numerical experiments using standard test problems from the literature are reported. Our results suggest that the method is robust and applicable to large-scale problems.
机译:提出了一种用于线性约束下非凸函数全局优化的随机算法。我们的方法遵循适当定义的随机微分方程(SDE)的轨迹。假设可行集包括线性等式约束,可能还包括盒形约束。轨迹的可行性是通过将其动力学投影到线性等式约束所定义的集合上来实现的。为了迫使轨迹保持在盒子约束之内,使用了障碍项。使用拉普拉斯的方法,我们给出了在问题的全局最小值集上定义的概率测度(Π)的表征。然后,我们研究与投影扩散过程相关的跃迁密度,并证明其弱极限由n给出。报告了使用文献中标准测试问题进行的数值实验。我们的结果表明,该方法是鲁棒的,适用于大规模问题。

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