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In this paper, we explore a class of constrained saddle point problems with a bilevel structure, where the upper-level objective function is nonconvex-concave and smooth subject to a strongly convex lower-level objective function. This class of problems finds wide applicability in machine learning, including robust multi-task learning, adversarial learning, and robust meta-learning. While some studies have focused on simpler formulations, e. g. , when the upper-level objective function is linear in the maximization component, there remains a significant gap in developing efficient projection-free and projection-based algorithms with theoretical guarantees for more general settings. To bridge this gap, we propose efficient single-loop one-sided projection-free, and fully projection-based primal-dual methods. By leveraging regularization and nested approximation techniques, we initially devise a bilevel primal-dual one-sided projection-free algorithm, requiring O (^-4) iterations to attain an -stationary point. Subsequently, we develop a bilevel primal-dual fully projected algorithm, capable of achieving an -stationary solution within O (^-5) iterations. To the best of our knowledge, our proposed algorithms represent among the first methods for solving general non-bilinear saddle point problems with a bilevel structure.
Ahmadi et al. (Fri,) studied this question.
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