Data-adaptive Active Sampling for Efficient Graph-Cognizant Classification

19 May 2017Dimitris BerberidisGeorgios B. Giannakis

The present work deals with active sampling of graph nodes representing training data for binary classification. The graph may be given or constructed using similarity measures among nodal features... (read more)

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