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Advances in Distributed Graph Filtering

机译:分布式图过滤的进展

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摘要

Graph filters are one of the core tools in graph signal processing. A central aspect of them is their direct distributed implementation. However, the filtering performance is often traded with distributed communication and computational savings. To improve this tradeoff, this paper generalizes state-of-the-art distributed graph filters to filters where every node weights the signal of its neighbors with different values while keeping the aggregation operation linear. This new implementation, labeled as edge-variant graph filter, yields a significant reduction in terms of communication rounds while preserving the approximation accuracy. In addition, we characterize a subset of shift-invariant graph filters that can be described with edge-variant recursions. By using a low-dimensional parameterization, these shift-invariant filters provide new insights in approximating linear graph spectral operators through the succession and composition of local operators, i.e., fixed support matrices. A set of numerical results shows the benefits of the edge-variant graph filters over current methods and illustrates their potential to a wider range of applications than graph filtering.
机译:图形滤波器是图形信号处理中的核心工具之一。它们的主要方面是它们的直接分布式实现。但是,过滤性能通常要与分布式通信和节省的计算能力进行权衡。为了改善这种权衡,本文将最先进的分布式图形滤波器概括为每个节点以不同值加权其邻居信号的权重,同时保持聚合操作线性的滤波器。标记为边缘变量图滤波器的这一新实现在保持近似精度的同时,显着减少了通信回合。另外,我们描述了可以用边缘变量递归描述的位移不变图滤波器的子集。通过使用低维参数化,这些位移不变滤波器通过局部算子(即固定支持矩阵)的继承和组合,为近似线性图谱算子提供了新的见解。一组数值结果显示了边变图过滤器相对于当前方法的优势,并说明了其比图过滤在更广泛的应用中的潜力。

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