Authors
Siheng Chen, Rohan Varma, Aarti Singh, Jelena Kovačević
Publication date
2015/12/16
Journal
arXiv preprint arXiv:1512.05406
Description
We present a framework for representing and modeling data on graphs. Based on this framework, we study three typical classes of graph signals: smooth graph signals, piecewise-constant graph signals, and piecewise-smooth graph signals. For each class, we provide an explicit definition of the graph signals and construct a corresponding graph dictionary with desirable properties. We then study how such graph dictionary works in two standard tasks: approximation and sampling followed with recovery, both from theoretical as well as algorithmic perspectives. Finally, for each class, we present a case study of a real-world problem by using the proposed methodology.
Total citations
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Scholar articles
S Chen, R Varma, A Singh, J Kovačević - arXiv preprint arXiv:1512.05406, 2015