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Rate of Convergence Analysis of Discretization and Smoothing Algorithms for Semiinfinite Minimax Problems

机译:半无限极小极大问题的离散化和平滑算法的收敛速度分析

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Discretization algorithms for semiinfinite minimax problems replace the original problem, containing an infinite number of functions, by an approximation involving a finite number, and then solve the resulting approximate problem. The approximation gives rise to a discretization error, and suboptimal solution of the approximate problem gives rise to an optimization error. Accounting for both discretization and optimization errors, we determine the rate of convergence of discretization algorithms, as a computing budget tends to infinity. We find that the rate of convergence depends on the class of optimization algorithms used to solve the approximate problem as well as the policy for selecting discretization level and number of optimization iterations. We construct optimal policies that achieve the best possible rate of convergence and find that, under certain circumstances, the better rate is obtained by inexpensive gradient methods.
机译:半无限极小极大问题的离散化算法通过涉及有限数的逼近来代替包含无限数量的函数的原始问题,然后求解所得的近似问题。逼近会产生离散误差,而逼近问题的次优解则会产生优化误差。考虑到离散化和优化误差,我们将确定离散化算法的收敛速度,因为计算预算趋于无穷大。我们发现收敛速度取决于用于解决近似问题的优化算法的类别以及选择离散化级别和优化迭代次数的策略。我们构建了可以实现最佳收敛速度的最优策略,发现在某些情况下,可以通过廉价的梯度方法获得更好的速度。

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