论文标题
基于子空间回收的正则化方法
Subspace Recycling-based Regularization Methods
论文作者
论文摘要
子空间回收技术已非常成功地用于迭代方法来解决大规模线性系统。这些方法通常是通过增强通过具有固定的向量子空间的已知算法生成的解决方案子空间来起作用的,该算法是``实用''用于解决问题的``有用''。通常,这具有诱导原始线性系统的投影版本,然后应用已知的迭代方法,并且该投影可以充当通气预处理器,加速收敛。大多数情况下,这些方法已用于解决方案良好的问题。但是,他们也开始考虑解决问题不足的问题。 在本文中,我们考虑基于最近开发的框架描述这些方法的框架,考虑了在连续的希尔伯特空间设置中应用于线性不良问题的子空间扩大型迭代方案。我们表明,在适当的假设下,一种回收方法可以满足正规化的形式定义,只要基础方案本身就是正规化。然后,我们开发了梯度下降方法的增强子空间版本,并在学术高斯模型模型以及由自适应光学界引起的问题上展示了其有效性,以通过基于地面的极大望远镜解决大型天空图像。
Subspace recycling techniques have been used quite successfully for the acceleration of iterative methods for solving large-scale linear systems. These methods often work by augmenting a solution subspace generated iteratively by a known algorithm with a fixed subspace of vectors which are ``useful'' for solving the problem. Often, this has the effect of inducing a projected version of the original linear system to which the known iterative method is then applied, and this projection can act as a deflation preconditioner, accelerating convergence. Most often, these methods have been applied for the solution of well-posed problems. However, they have also begun to be considered for the solution of ill-posed problems. In this paper, we consider subspace augmentation-type iterative schemes applied to linear ill-posed problems in a continuous Hilbert space setting, based on a recently developed framework describing these methods. We show that under suitable assumptions, a recycling method satisfies the formal definition of a regularization, as long as the underlying scheme is itself a regularization. We then develop an augmented subspace version of the gradient descent method and demonstrate its effectiveness, both on an academic Gaussian blur model and on problems arising from the adaptive optics community for the resolution of large sky images by ground-based extremely large telescopes.