2020
DOI: 10.48550/arxiv.2005.01952
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Non-Bayesian Estimation Framework for Signal Recovery on Graphs

Tirza Routtenberg

Abstract: Graph signals arise from physical networks, such as power and communication systems, or as a result of a convenient representation of data with complex structure, such as social networks. We consider the problem of general graph signal recovery from noisy, corrupted, or incomplete measurements and under structural parametric constraints, such as smoothness in the graph frequency domain. In this paper, we formulate the graph signal recovery as a non-Bayesian estimation problem under a weighted mean-squared-erro… Show more

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