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Stochastic Inexact Augmented Lagrangian Method for Nonconvex Expectation Constrained Optimization

19 December 2022
Zichong Li
Pinzhuo Chen
Sijia Liu
Songtao Lu
Yangyang Xu
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Abstract

Many real-world problems not only have complicated nonconvex functional constraints but also use a large number of data points. This motivates the design of efficient stochastic methods on finite-sum or expectation constrained problems. In this paper, we design and analyze stochastic inexact augmented Lagrangian methods (Stoc-iALM) to solve problems involving a nonconvex composite (i.e. smooth+nonsmooth) objective and nonconvex smooth functional constraints. We adopt the standard iALM framework and design a subroutine by using the momentum-based variance-reduced proximal stochastic gradient method (PStorm) and a postprocessing step. Under certain regularity conditions (assumed also in existing works), to reach an ε\varepsilonε-KKT point in expectation, we establish an oracle complexity result of O(ε−5)O(\varepsilon^{-5})O(ε−5), which is better than the best-known O(ε−6)O(\varepsilon^{-6})O(ε−6) result. Numerical experiments on the fairness constrained problem and the Neyman-Pearson classification problem with real data demonstrate that our proposed method outperforms an existing method with the previously best-known complexity result.

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