Tight FPT Approximations for k-Median and k-Means
Abstract
We investigate the fine-grained complexity of approximating the classical k-median / k-means clustering problems in general metric spaces. We show how to improve the approximation factors to (1+2/e+) and (1+8/e+) respectively, using algorithms that run in fixed-parameter time. Moreover, we show that we cannot do better in FPT time, modulo recent complexity-theoretic conjectures.
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