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Online Topology Inference from Streaming Stationary Graph Signals with Partial Connectivity Information
[article]
2020
arXiv
pre-print
We develop online graph learning algorithms from streaming network data. Our goal is to track the (possibly) time-varying network topology, and effect memory and computational savings by processing the data on-the-fly as they are acquired. The setup entails observations modeled as stationary graph signals generated by local diffusion dynamics on the unknown network. Moreover, we may have a priori information on the presence or absence of a few edges as in the link prediction problem. The
arXiv:2007.03653v1
fatcat:7nht6r47wfgjxcauzexvlnun4a