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Eigendecomposition-Free Sampling Set Selection for Graph Signals

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This paper addresses the problem of selecting an optimal sampling set for signals on graphs. The proposed sampling set selection (SSS) is based on a localization operator that can consider both vertex domain and spectral domain localization. We clarify the relationships among the proposed method, sensor position selection methods in machine learning, and conventional SSS methods based on graph frequency. In contrast to the conventional graph signal processing-based approaches, the proposed method does not need to compute the eigendecomposition of a variation operator, while still considering (graph) frequency information. We evaluate the performance of our approach through comparisons of prediction errors and execution time.

Akie Sakiyama, Yuichi Tanaka, Toshihisa Tanaka, Antonio Ortega• 2018

Related benchmarks

TaskDatasetResultRank
Time-Varying Graph Signal ReconstructionLong-span Cable-stayed Bridge (test)
RMSE0.6153
30
Damage DetectionTrain-Track-Bridge (test)
Accuracy77.3
6
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