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A Linear Time Active Learning Algorithm for Link Classification -- Full Version --
- Publication Year :
- 2013
-
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 G = (V,E) such that |E| = \Omega(|V|^{3/2}) by querying O(|V|^{3/2}) edge labels. More generally, we show an algorithm that achieves optimality to within a factor of O(k) by querying at most order of |V| + (|V|/k)^{3/2} edge labels. The running time of this algorithm is at most of order |E| + |V|\log|V|.
Details
- Database :
- arXiv
- Publication Type :
- Report
- Accession number :
- edsarx.1301.4767
- Document Type :
- Working Paper