4.7 Article

Metalearning-Based Alternating Minimization Algorithm for Nonconvex Optimization

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TNNLS.2022.3165627

关键词

Optimization; Minimization; Task analysis; Deep learning; Neural networks; Signal processing algorithms; Iterative algorithms; Alternating minimization (AM); deep unfolding; gaussian mixture model (GMM); matrix completion; meta-learning (ML)

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In this article, a meta-learning based alternating minimization (MLAM) method is proposed to solve nonconvex problems of multiple variables. By iteratively minimizing a part of the global losses, the method learns an adaptive strategy for superior performance while maintaining interpretability.
In this article, we propose a novel solution for nonconvex problems of multiple variables, especially for those typically solved by an alternating minimization (AM) strategy that splits the original optimization problem into a set of subproblems corresponding to each variable and then iteratively optimizes each subproblem using a fixed updating rule. However, due to the intrinsic nonconvexity of the original optimization problem, the optimization can be trapped into a spurious local minimum even when each subproblem can be optimally solved at each iteration. Meanwhile, learning-based approaches, such as deep unfolding algorithms, have gained popularity for nonconvex optimization; however, they are highly limited by the availability of labeled data and insufficient explainability. To tackle these issues, we propose a meta-learning based alternating minimization (MLAM) method that aims to minimize a part of the global losses over iterations instead of carrying minimization on each subproblem, and it tends to learn an adaptive strategy to replace the handcrafted counterpart resulting in advance on superior performance. The proposed MLAM maintains the original algorithmic principle, providing certain interpretability. We evaluate the proposed method on two representative problems, namely, bilinear inverse problem: matrix completion and nonlinear problem: Gaussian mixture models. The experimental results validate the proposed approach outperforms AM-based methods.

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