Scalable Semi-Supervised Learning over Networks using Nonsmooth Convex Optimization

2 Nov 2016Alexander JungAlfred O. Hero IIIAlexandru MaraSabeur Aridhi

We propose a scalable method for semi-supervised (transductive) learning from massive network-structured datasets. Our approach to semi-supervised learning is based on representing the underlying hypothesis as a graph signal with small total variation... (read more)

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