The area of Data Analytics on graphs deals with information processing of data acquired on irregular but structured graph domains. The focus of Part I of this monograph has been on both the fundamental and higher-order graph properties, graph topologies, and spectral representations of graphs. Part I also establishes rigorous frameworks for vertex clustering and graph segmentation, and illustrates the power of graphs in various data association tasks. Part II embarks on these concepts to address the algorithmic and practical issues related to data/signal processing on graphs, with the focus on the analysis and estimation of both deterministic and random data on graphs. The fundamental ideas related to graph signals are introduced through a simple and intuitive, yet general enough case study of multisensor temperature field estimation. The concept of systems on graph is defined using graph signal shift operators, which generalize the corresponding principles from traditional learning systems. At the core of the spectral domain representation of graph signals and systems is the Graph Fourier Transform (GFT), defined based on the eigendecomposition of both the adjacency matrix and the graph Laplacian. Spectral domain representations are then used as the basis to introduce graph signal filtering concepts and address their design, including Chebyshev series polynomial approximation. Ideas related to the sampling of graph signals, and in particular the challenging topic of data dimensionality reduction through graph subsampling, are presented and further linked with compres-sive sensing. The principles of time-varying signals on graphs and basic definitions related to random graph signals are next reviewed. Localized graph signal analysis in the joint vertex-spectral domain is referred to as the vertex-frequency analysis, since it can be considered as an extension of classical time-frequency analysis to the graph serving as signal domain. Important aspects of the local graph Fourier transform (LGFT) are covered, together with its various forms including the graph spectral and vertex domain windows and the inversion conditions and relations. A link between the LGFT with a varying spectral window and the spectral graph wavelet transform (SGWT) is also established. Realizations of the LGFT and SGWT using polynomial (Chebyshev) approximations of the spectral functions are further considered and supported by examples. Finally, energy versions of the vertex-frequency representations are introduced, along with their relations with classical time-frequency analysis, including a vertex-frequency distribution that can satisfy the marginal properties. The material is supported by illustrative examples.
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22 December 2020
Research Article|
December 22 2020
Data Analytics on Graphs Part II: Signals on Graphs Available to Purchase
Stanković Ljubiša;
Stanković Ljubiša
University of Montenegro
, Montenegro
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Miloš Daković;
Miloš Daković
University of Montenegro
, Montenegro
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Miloš Brajović;
Miloš Brajović
University of Montenegro
, Montenegro
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Anthony G. Constantinides
Anthony G. Constantinides
Imperial College London
, UK
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Online ISSN: 1935-8245
Print ISSN: 1935-8237
© 2020 L. Stanković, D. Mandic, M. Daković, M. Brajović, B. Scalzo, S. Li and A. G. Constantinides
2020
L. Stanković, D. Mandic, M. Daković, M. Brajović, B. Scalzo, S. Li and A. G. Constantinides
Licensed re-use rights only
Foundations and Trends in Machine Learning (2020) 13 (2-3): 158–331.
Citation
Ljubiša S, Mandic D, Daković M, Brajović M, Scalzo B, Li S, Constantinides AG (2020), "Data Analytics on Graphs Part II: Signals on Graphs". Foundations and Trends in Machine Learning, Vol. 13 No. 2-3 pp. 158–331, doi: https://doi.org/10.1561/2200000078-2
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