Localized Spectral Graph Filter Frames: A Unifying Framework, Survey of Design Considerations, and Numerical Comparison
David I. Shuman
Abstract
A major line of work in graph signal processing [2] during the past 10 years has been to design new transform methods that account for the underlying graph structure to identify and exploit structure in data residing on a connected, weighted, undirected graph. The most common approach is to construct a dictionary of atoms (building block signals) and represent the graph signal of interest as a linear combination of these atoms. Such representations enable visual analysis of data, statistical analysis of data, and data compression, and they can also be leveraged as regularizers in machine learning and ill-posed inverse problems, such as in painting, denoising, and classification.
Topics & Concepts
Computer scienceGraphAlgorithmTheoretical computer scienceExploitSignal processingFilter (signal processing)Undirected graphInverseInverse filterSpectral graph theoryData structureArtificial intelligenceGraph theoryPattern recognition (psychology)Directed graphSpectral analysisComputational complexity theoryConnectivityData modelingLinear filterBlock (permutation group theory)Spectral methodVisualizationInverse problemConstruct (python library)Graphical modelAdvanced Graph Neural NetworksGraph Theory and AlgorithmsData Visualization and Analytics