Projection-Free Variance Reduction Methods for Stochastic Constrained Multi-Level Compositional Optimization
Abstract
This paper investigates projection-free algorithms for stochastic constrained multi-level optimization. In this context, the objective function is a nested composition of several smooth functions, and the decision set is closed and convex. Existing projection-free algorithms for solving this problem suffer from two limitations: 1) they solely focus on the gradient mapping criterion and fail to match the optimal sample complexities in unconstrained settings; 2) their analysis is exclusively applicable to non-convex functions, without considering convex and strongly convex objectives. To address these issues, we introduce novel projection-free variance reduction algorithms and analyze their complexities under different criteria. For gradient mapping, our complexities improve existing results and match the optimal rates for unconstrained problems. For the widely-used Frank-Wolfe gap criterion, we provide theoretical guarantees that align with those for single-level problems. Additionally, by using a stage-wise adaptation, we further obtain complexities for convex and strongly convex functions. Finally, numerical experiments on different tasks demonstrate the effectiveness of our methods.
Cite
Text
Jiang et al. "Projection-Free Variance Reduction Methods for Stochastic Constrained Multi-Level Compositional Optimization." International Conference on Machine Learning, 2024.Markdown
[Jiang et al. "Projection-Free Variance Reduction Methods for Stochastic Constrained Multi-Level Compositional Optimization." International Conference on Machine Learning, 2024.](https://mlanthology.org/icml/2024/jiang2024icml-projectionfree/)BibTeX
@inproceedings{jiang2024icml-projectionfree,
title = {{Projection-Free Variance Reduction Methods for Stochastic Constrained Multi-Level Compositional Optimization}},
author = {Jiang, Wei and Yang, Sifan and Yang, Wenhao and Wang, Yibo and Wan, Yuanyu and Zhang, Lijun},
booktitle = {International Conference on Machine Learning},
year = {2024},
pages = {21962-21987},
volume = {235},
url = {https://mlanthology.org/icml/2024/jiang2024icml-projectionfree/}
}