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Correlation Clustering with Asymmetric Classification Errors

2021-08-11ICML 2020Unverified0· sign in to hype

Jafar Jafarov, Sanchit Kalhan, Konstantin Makarychev, Yury Makarychev

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Abstract

In the Correlation Clustering problem, we are given a weighted graph G with its edges labeled as "similar" or "dissimilar" by a binary classifier. The goal is to produce a clustering that minimizes the weight of "disagreements": the sum of the weights of "similar" edges across clusters and "dissimilar" edges within clusters. We study the correlation clustering problem under the following assumption: Every "similar" edge e has weight w_e[ w, w] and every "dissimilar" edge e has weight w_e w (where 1 and w>0 is a scaling parameter). We give a (3 + 2 _e (1/)) approximation algorithm for this problem. This assumption captures well the scenario when classification errors are asymmetric. Additionally, we show an asymptotically matching Linear Programming integrality gap of ( 1/).

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