Finding GEMS: Multi-Scale Dictionaries for High-Dimensional Graph Signals
Yael Yankelevsky, Michael Elad

TL;DR
This paper introduces a scalable dictionary learning method for high-dimensional graph signals that combines multi-scale graph-wavelet atoms with explicit graph constraints to improve signal representation.
Contribution
The paper presents a novel dictionary learning algorithm that handles high-dimensional graph signals by integrating multi-scale graph-wavelet atoms and explicit graph constraints.
Findings
Effective for high-dimensional graph signals
Improves signal representation quality
Works on synthetic and real network data
Abstract
Modern data introduces new challenges to classic signal processing approaches, leading to a growing interest in the field of graph signal processing. A powerful and well established model for real world signals in various domains is sparse representation over a dictionary, combined with the ability to train the dictionary from signal examples. This model has been successfully applied to graph signals as well by integrating the underlying graph topology into the learned dictionary. Nonetheless, dictionary learning methods for graph signals are typically restricted to small dimensions due to the computational constraints that the dictionary learning problem entails, and due to the direct use of the graph Laplacian matrix. In this paper, we propose a dictionary learning algorithm that applies to a broader class of graph signals, and is capable of handling much higher dimensional data. We…
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