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arxiv: 1406.5667 · v2 · pith:UAMLCPPJnew · submitted 2014-06-22 · 💻 cs.DS · cs.LG

Correlation Clustering with Noisy Partial Information

classification 💻 cs.DS cs.LG
keywords clusteringcorrelationdeltaalgorithmfindsmodeloptcostsolution
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In this paper, we propose and study a semi-random model for the Correlation Clustering problem on arbitrary graphs G. We give two approximation algorithms for Correlation Clustering instances from this model. The first algorithm finds a solution of value $(1+ \delta) optcost + O_{\delta}(n\log^3 n)$ with high probability, where $optcost$ is the value of the optimal solution (for every $\delta > 0$). The second algorithm finds the ground truth clustering with an arbitrarily small classification error $\eta$ (under some additional assumptions on the instance).

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