English

Signal Processing over Multilayer Graphs: Theoretical Foundations and Practical Applications

Signal Processing 2022-11-02 v6

Abstract

Signal processing over single-layer graphs has become a mainstream tool owing to its power in revealing obscure underlying structures within data signals. However, many real-life datasets and systems, {including those in Internet of Things (IoT)}, are characterized by more complex interactions among distinct entities, which may represent multi-level interactions that are harder to be captured with a single-layer graph, and can be better characterized by multilayers graph connections. Such multilayer or multi-level data structure can be more naturally modeled by high-dimensional multilayer graphs (MLG)}. To generalize traditional graph signal processing (GSP) over multilayer graphs for analyzing multi-level signal features and their interactions, this work proposes a tensor-based framework of multilayer graph signal processing (M-GSP). Specifically, we introduce core concepts of M-GSP and study properties of MLG spectrum space, followed by fundamentals of MLG-based filter design. To illustrate novel aspects of M-GSP, we further explore its link with traditional signal processing and GSP. We provide example applications to demonstrate the efficacy and benefits of applying multilayer graphs and M-GSP in practical scenarios.

Keywords

Cite

@article{arxiv.2108.13638,
  title  = {Signal Processing over Multilayer Graphs: Theoretical Foundations and Practical Applications},
  author = {Songyang Zhang and Qinwen Deng and Zhi Ding},
  journal= {arXiv preprint arXiv:2108.13638},
  year   = {2022}
}
R2 v1 2026-06-24T05:33:09.458Z