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EOR
2010

Min sum clustering with penalties

13 years 11 months ago
Min sum clustering with penalties
Traditionally, clustering problems are investigated under the assumption that all objects must be clustered. A shortcoming of this formulation is that a few distant objects, called outliers, may exert a disproportionately strong influence over the solution. In this work we investigate the k-min-sum clustering problem while addressing outliers in a meaningful way. Given a complete graph G = (V, E), a weight function w : E IN0 on its edges, and p IN0 a penalty function on its vertices, the penalized k-min-sum problem is the problem of finding a partition of V to k + 1 sets, S1, . . . , Sk+1, minimizing k i=1 w(Si) + p(Sk+1), where for S V w(S) = e={i,j}S we, and p(S) = iS pi. Our main result is a randomized approximation scheme for the metric version of the penalized 1-min-sum problem, when the ratio between the minimal and maximal penalty is bounded. For the metric penalized k-min-sum problem where k is a constant, we offer a 2-approximation.
Refael Hassin, Einat Or
Added 10 Dec 2010
Updated 10 Dec 2010
Type Journal
Year 2010
Where EOR
Authors Refael Hassin, Einat Or
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