FPT Approximation for Constrained Metric $k$-Median/Means
Dishant Goyal, Ragesh Jaiswal, Amit Kumar

TL;DR
This paper introduces fixed-parameter tractable algorithms with constant approximation guarantees for various constrained metric k-median and k-means problems, including new results and improvements over previous work, using a unified framework and simple sampling techniques.
Contribution
It provides the first constant-factor approximation algorithms for several constrained k-median/means problems and improves existing guarantees for others, within a unified FPT framework.
Findings
Achieves a (3+ε)-approximation for constrained k-median in FPT time.
Achieves a (9+ε)-approximation for constrained k-means in FPT time.
Special case with clients as facilities yields (2+ε) and (4+ε) approximations.
Abstract
The Metric -median problem over a metric space is defined as follows: given a set of facility locations and a set of clients, open a set of facilities such that the total service cost, defined as , is minimised. The metric -means problem is defined similarly using squared distances. In many applications there are additional constraints that any solution needs to satisfy. This gives rise to different constrained versions of the problem such as -gather, fault-tolerant, outlier -means/-median problem. Surprisingly, for many of these constrained problems, no constant-approximation algorithm is known. We give FPT algorithms with constant approximation guarantee for a range of constrained -median/means problems. For some of the…
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