Connecting randomized iterative methods with Krylov subspaces
Connecting randomized iterative methods with Krylov subspaces
Randomized iterative methods, such as the randomized Kaczmarz method, have gained significant attention for solving large-scale linear systems due to their simplicity and efficiency. Meanwhile, Krylov subspace methods have emerged as a powerful class of algorithms, known for their robust theoretical foundations and rapid convergence properties. Despite the individual successes of these two paradigms, their underlying connection has remained largely unexplored. In this paper, we develop a unified framework that bridges randomized iterative methods and Krylov subspace techniques, supported by both rigorous theoretical analysis and practical implementation. The core idea is to formulate each iteration as an adaptively weighted linear combination of the sketched normal vector and previous iterates, with the weights optimally determined via a projection-based mechanism. This formulation not only reveals how subspace techniques can enhance the efficiency of randomized iterative methods, but also enables the design of a new class of iterative-sketching-based Krylov subspace algorithms. We prove that our method converges linearly in expectation and validate our findings with numerical experiments.
Yonghan Sun、Deren Han、Jiaxin Xie
数学
Yonghan Sun,Deren Han,Jiaxin Xie.Connecting randomized iterative methods with Krylov subspaces[EB/OL].(2025-05-26)[2025-06-13].https://arxiv.org/abs/2505.20602.点此复制
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