• Media type: E-Article; Electronic Conference Proceeding; Text
  • Title: Online Correlation Clustering
  • Contributor: Mathieu, Claire [Author]; Sankur, Ocan [Author]; Schudy, Warren [Author]
  • imprint: Schloss Dagstuhl – Leibniz-Zentrum für Informatik, 2010
  • Language: English
  • DOI: https://doi.org/10.4230/LIPIcs.STACS.2010.2486
  • Keywords: online algorithms ; Correlation clustering
  • Origination:
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  • Description: We study the online clustering problem where data items arrive in an online fashion. The algorithm maintains a clustering of data items into similarity classes. Upon arrival of v, the relation between v and previously arrived items is revealed, so that for each u we are told whether v is similar to u. The algorithm can create a new luster for v and merge existing clusters. When the objective is to minimize disagreements between the clustering and the input, we prove that a natural greedy algorithm is O(n)-competitive, and this is optimal. When the objective is to maximize agreements between the clustering and the input, we prove that the greedy algorithm is .5-competitive; that no online algorithm can be better than .834-competitive; we prove that it is possible to get better than 1/2, by exhibiting a randomized algorithm with competitive ratio .5+c for a small positive fixed constant c.
  • Access State: Open Access