随机图信号的生成与判别数据驱动的图滤波

Lital Dabush, Nir Shlezinger, T. Routtenberg
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引用次数: 0

摘要

本文研究了利用图信号处理(GSP)工具恢复随机图信号的问题。我们专注于部分已知的线性设置,在设计信号恢复的图滤波器时,人们可以访问数据以应对缺失的领域知识。在这项工作中,我们制定了两种主要方法来利用可用的领域知识和数据进行图滤波器设计:1)gsp生成方法,其中数据用于拟合确定图滤波器的底层线性模型;2) gsp判别方法,其中使用数据直接学习图信号恢复的图滤波器,而不需要估计底层模型。然后,对这两种图形滤波器设计方法进行定性和定量比较。我们的结果提供了一种关于哪种方法在哪种制度下更可取的理解。特别是,研究表明,gsp判别学习可靠地处理了可用领域知识中的不匹配,因为它绕过了拟合底层模型的需要。另一方面,gsp生成方法的模型感知使其在数据稀缺时获得较低的均方误差(MSE)。在训练数据点数量趋近于无穷大的渐近区域,两种方法都得到了考虑设置下的oracle最小MSE估计量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generative Versus Discriminative Data-Driven Graph Filtering of Random Graph Signals
In this paper we consider the problem of recovering random graph signals by using graph signal processing (GSP) tools. We focus on partially-known linear settings, where one has access to data in order to cope with the missing domain knowledge in designing a graph filter for signal recovery. In this work, we formulate two main approaches for leveraging both the available domain knowledge and data for such graph filter design: 1) the GSP-generative approach, where data is used to fit the underlying linear model that determines the graph filter; and 2) the GSP-discriminative approach, where data is used to directly learn the graph filter for graph signal recovery, bypassing the need to estimate the underlying model. Then, we compare qualitatively and quantitatively these two approaches of graph filter design. Our results provide an understanding with regard to which approach is preferable in which regime. In particular, it is shown that GSP-discriminative learning reliably copes with mismatches in the available domain knowledge, since it bypasses the need to fit the underlying model. On the other hand, the model awareness of the GSP-generative approach results in its achieving a lower mean-squared error (MSE) when data is scarce. In the asymptotic region where the number of training data points approaches infinity, both approaches achieve the oracle minimum MSE estimator under the considered setting.
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