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arxiv: 1212.1182 · v3 · pith:PXX5XIQYnew · submitted 2012-12-05 · 📊 stat.ML · math.ST· stat.TH

Universally consistent vertex classification for latent positions graphs

classification 📊 stat.ML math.STstat.TH
keywords classclassificationlatentconsistentdistributionfunctiongraphskappa
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In this work we show that, using the eigen-decomposition of the adjacency matrix, we can consistently estimate feature maps for latent position graphs with positive definite link function $\kappa$, provided that the latent positions are i.i.d. from some distribution F. We then consider the exploitation task of vertex classification where the link function $\kappa$ belongs to the class of universal kernels and class labels are observed for a number of vertices tending to infinity and that the remaining vertices are to be classified. We show that minimization of the empirical $\varphi$-risk for some convex surrogate $\varphi$ of 0-1 loss over a class of linear classifiers with increasing complexities yields a universally consistent classifier, that is, a classification rule with error converging to Bayes optimal for any distribution F.

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