2016
DOI: 10.48550/arxiv.1603.08113
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Reconstructing undirected graphs from eigenspaces

Abstract: In this paper, we aim at recovering an undirected weighted graph of N vertices from the knowledge of a perturbed version of the eigenspaces of its adjacency matrix W. For instance, this situation arises for stationary signals on graphs or for Markov chains observed at random times. Our approach is based on minimizing a cost function given by the Frobenius norm of the commutator AB − BA between symmetric matrices A and B.In the Erdős-Rényi model with no self-loops, we show that identifiability (i.e., the abilit… Show more

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