具有不精确子问题解和梯度聚合的梯度采样方法

Frank E. Curtis, Minhan Li
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引用次数: 2

摘要

梯度采样(GS)方法的目标函数,可能是非凸和/或非光滑的最小化提出,分析和测试。当代GS方法中计算成本最高的部分之一是需要在每次迭代中求解一个凸二次子问题。相比之下,本文提出的方法允许使用这些子问题的不精确解,正如本文所证明的那样,这些子问题可以在不失去理论收敛保证的情况下合并。数值实验表明,通过利用不精确的子问题解,可以持续地减少GS方法所需的计算量。此外,还提出了一种在子问题求解后(可能不精确)聚合梯度信息的策略,该策略已被用于非光滑优化的束方法中。证明了可以在不丧失理论收敛保证的情况下引入聚合方案。数值实验表明,结合这种梯度聚集方法也可以减少高斯方法的计算量。
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Gradient Sampling Methods with Inexact Subproblem Solutions and Gradient Aggregation
Gradient sampling (GS) methods for the minimization of objective functions that may be nonconvex and/or nonsmooth are proposed, analyzed, and tested. One of the most computationally expensive components of contemporary GS methods is the need to solve a convex quadratic subproblem in each iteration. By contrast, the methods proposed in this paper allow the use of inexact solutions of these subproblems, which, as proved in the paper, can be incorporated without the loss of theoretical convergence guarantees. Numerical experiments show that, by exploiting inexact subproblem solutions, one can consistently reduce the computational effort required by a GS method. Additionally, a strategy is proposed for aggregating gradient information after a subproblem is solved (potentially inexactly) as has been exploited in bundle methods for nonsmooth optimization. It is proved that the aggregation scheme can be introduced without the loss of theoretical convergence guarantees. Numerical experiments show that incorporating this gradient aggregation approach can also reduce the computational effort required by a GS method.
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