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Recovering sparse networks: Basis adaptation and stability under extensions

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arxiv 2104.00796 v1 pith:A5EXMW4P submitted 2021-04-01 math.DS nlin.AO

Recovering sparse networks: Basis adaptation and stability under extensions

classification math.DS nlin.AO
keywords sparsebasisextensionsmotifsnetworknetworksrecoveringunder
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We consider the problem of recovering equations of motion from multivariate time series of oscillators interacting on sparse networks. We reconstruct the network from an initial guess which can include expert knowledge about the system such as main motifs and hubs. When sparsity is taken into account the number of data points needed is drastically reduced when compared to the least-squares recovery. We show that the sparse solution is stable under basis extensions, that is, once the correct network topology is obtained, the result does not change if further motifs are considered.

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