论文标题
图形信号重建的节点自适应正则化
Node-Adaptive Regularization for Graph Signal Reconstruction
论文作者
论文摘要
图形信号处理中的一项关键任务是在节点子集(也称为重建问题)上估算噪声观测值的真实信号。在本文中,我们提出了用于图形信号重建的节点自适应正则化,这覆盖了常规的Tikhonov正则化,从而产生了更高的自由度。因此,性能改善。我们制定了节点自适应图形信号剥落问题,研究其偏差变化权衡,并确定在Tikhonov正则化方面可以获得较低平均平方误差和差异的条件。与现有方法相比,节点自适应正规化在局部信号变化上享有更一般的先验,可以通过根据Prony的方法或半芬矿编程来最佳设计正则重量来获得。由于这些方法需要额外的先验知识,因此我们还提出了一种Minimax(最坏情况)策略,以解决这些额外信息无法提供的实例。合成和真实数据的数值实验证实了图形信号定义和插值的拟议正则化策略,并显示了与竞争替代方案相比,其性能的提高。
A critical task in graph signal processing is to estimate the true signal from noisy observations over a subset of nodes, also known as the reconstruction problem. In this paper, we propose a node-adaptive regularization for graph signal reconstruction, which surmounts the conventional Tikhonov regularization, giving rise to more degrees of freedom; hence, an improved performance. We formulate the node-adaptive graph signal denoising problem, study its bias-variance trade-off, and identify conditions under which a lower mean squared error and variance can be obtained with respect to Tikhonov regularization. Compared with existing approaches, the node-adaptive regularization enjoys more general priors on the local signal variation, which can be obtained by optimally designing the regularization weights based on Prony's method or semidefinite programming. As these approaches require additional prior knowledge, we also propose a minimax (worst-case) strategy to address instances where this extra information is unavailable. Numerical experiments with synthetic and real data corroborate the proposed regularization strategy for graph signal denoising and interpolation, and show its improved performance compared with competing alternatives.