Learning graphs from data: A signal representation perspective

June 03, 2018 ยท Declared Dead ยท ๐Ÿ› IEEE Signal Processing Magazine

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Authors Xiaowen Dong, Dorina Thanou, Michael Rabbat, Pascal Frossard arXiv ID 1806.00848 Category cs.LG: Machine Learning Cross-listed cs.SI, stat.ML Citations 408 Venue IEEE Signal Processing Magazine Last Checked 3 months ago
Abstract
The construction of a meaningful graph topology plays a crucial role in the effective representation, processing, analysis and visualization of structured data. When a natural choice of the graph is not readily available from the data sets, it is thus desirable to infer or learn a graph topology from the data. In this tutorial overview, we survey solutions to the problem of graph learning, including classical viewpoints from statistics and physics, and more recent approaches that adopt a graph signal processing (GSP) perspective. We further emphasize the conceptual similarities and differences between classical and GSP-based graph inference methods, and highlight the potential advantage of the latter in a number of theoretical and practical scenarios. We conclude with several open issues and challenges that are keys to the design of future signal processing and machine learning algorithms for learning graphs from data.
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