Complexity of Local Search for Euclidean Clustering Problems

Abstract

We show that the simplest local search heuristics for two natural Euclidean clustering problems are PLS-complete. First, we show that the Hartigan--Wong method for k-Means clustering is PLS-complete, even when k = 2. Second, we show the same result for the Flip heuristic for Max Cut, even when the edge weights are given by the (squared) Euclidean distances between the points in some set X ⊂eq Rd; a problem which is equivalent to Min Sum 2-Clustering.

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