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Random Walk Sampling for Big Data over Networks

Published 16 Apr 2017 in stat.ML and cs.LG | (1704.04799v1)

Abstract: It has been shown recently that graph signals with small total variation can be accurately recovered from only few samples if the sampling set satisfies a certain condition, referred to as the network nullspace property. Based on this recovery condition, we propose a sampling strategy for smooth graph signals based on random walks. Numerical experiments demonstrate the effectiveness of this approach for graph signals obtained from a synthetic random graph model as well as a real-world dataset.

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