A Stochastic Inexact Sequential Quadratic Optimization Algorithm for Nonlinear Equality-Constrained Optimization

Frank E. Curtis, Daniel P. Robinson, Baoyu Zhou
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Abstract

A stochastic algorithm is proposed, analyzed, and tested experimentally for solving continuous optimization problems with nonlinear equality constraints. It is assumed that constraint function and derivative values can be computed but that only stochastic approximations are available for the objective function and its derivatives. The algorithm is of the sequential quadratic optimization variety. Distinguishing features of the algorithm are that it only employs stochastic objective gradient estimates that satisfy a relatively weak set of assumptions (while using neither objective function values nor estimates of them) and that it allows inexact subproblem solutions to be employed, the latter of which is particularly useful in large-scale settings when the matrices defining the subproblems are too large to form and/or factorize. Conditions are imposed on the inexact subproblem solutions that account for the fact that only stochastic objective gradient estimates are employed. Convergence results are established for the method. Numerical experiments show that the proposed method vastly outperforms a stochastic subgradient method and can outperform an alternative sequential quadratic programming algorithm that employs highly accurate subproblem solutions in every iteration. Funding: This material is based upon work supported by the National Science Foundation [Awards CCF-1740796 and CCF-2139735] and the Office of Naval Research [Award N00014-21-1-2532].
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非线性等式约束优化的随机非精确序列二次优化算法
本文提出了一种随机算法,并对其进行了分析和实验测试,以解决具有非线性相等约束条件的连续优化问题。假设可以计算约束函数和导数值,但目标函数及其导数只有随机近似值。该算法属于顺序二次优化算法。该算法的显著特点是,它只采用满足一组相对较弱假设的随机目标梯度估计值(同时既不使用目标函数值,也不使用其估计值),而且允许采用不精确的子问题解决方案,后者在大规模环境中特别有用,因为定义子问题的矩阵太大,无法形成和/或因式分解。考虑到只采用随机目标梯度估计,对非精确子问题解施加了条件。确定了该方法的收敛结果。数值实验表明,所提出的方法大大优于随机子梯度方法,并且优于在每次迭代中都采用高精度子问题解的另一种顺序二次编程算法。资助:本资料基于美国国家科学基金会 [CCF-1740796 和 CCF-2139735] 以及海军研究办公室 [N00014-21-1-2532] 的资助。
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