Max-Distance Sparsification for Diversification and Clustering
Soh Kumabe

TL;DR
This paper introduces a unified framework using max-distance sparsifiers to develop fixed-parameter tractable algorithms for diversification and clustering problems across various combinatorial domains.
Contribution
It presents the concept of max-distance sparsifiers and FPT algorithms applicable to multiple new and existing combinatorial domains for diversification problems.
Findings
First FPT algorithms for several new domains like t-linear matroid intersection and Steiner trees.
Framework generalizes most existing domain-specific tractability results.
Introduces max-distance sparsifier concept enabling efficient algorithms for diversification and clustering.
Abstract
Let be a set family that is the solution domain of some combinatorial problem. The \emph{max-min diversification problem on } is the problem to select sets from such that the Hamming distance between any two selected sets is at least . FPT algorithms parameterized by , where , and have been actively studied recently for several specific domains. This paper provides unified algorithmic frameworks to solve this problem. Specifically, for each parameterization and , we provide an FPT oracle algorithm for the max-min diversification problem using oracles related to . We then demonstrate that our frameworks provide the first FPT algorithms on several new domains , including the domain of -linear matroid intersection, almost -SAT, minimum edge…
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