Poster
A Linear Time Active Learning Algorithm for Link Classification
Nicolò Cesa-Bianchi · Claudio Gentile · Fabio Vitale · Giovanni Zappella
Harrah’s Special Events Center 2nd Floor
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Abstract
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Abstract:
We present very efficient active learning algorithms for link classification in signed networks. Our algorithms are motivated by a stochastic model in which edge labels are obtained through perturbations of a initial sign assignment consistent with a two-clustering of the nodes. We provide a theoretical analysis within this model, showing that we can achieve an optimal (to whithin a constant factor) number of mistakes on any graph such that is at least order of by querying at most order of edge labels. More generally, we show an algorithm that achieves optimality to within a factor of order by querying at most order of edge labels. The running time of this algorithm is at most of order .
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