Minimum-Membership Geometric Set Cover, Revisited (2305.03985v1)
Abstract: We revisit a natural variant of geometric set cover, called minimum-membership geometric set cover (MMGSC). In this problem, the input consists of a set $S$ of points and a set $\mathcal{R}$ of geometric objects, and the goal is to find a subset $\mathcal{R}*\subseteq\mathcal{R}$ to cover all points in $S$ such that the \textit{membership} of $S$ with respect to $\mathcal{R}*$, denoted by $\mathsf{memb}(S,\mathcal{R}*)$, is minimized, where $\mathsf{memb}(S,\mathcal{R}*)=\max_{p\in S}|{R\in\mathcal{R}*: p\in R}|$. We achieve the following two main results. * We give the first polynomial-time constant-approximation algorithm for MMGSC with unit squares. This answers a question left open since the work of Erlebach and Leeuwen [SODA'08], who gave a constant-approximation algorithm with running time $n{O(\mathsf{opt})}$ where $\mathsf{opt}$ is the optimum of the problem (i.e., the minimum membership). * We give the first polynomial-time approximation scheme (PTAS) for MMGSC with halfplanes. Prior to this work, it was even unknown whether the problem can be approximated with a factor of $o(\log n)$ in polynomial time, while it is well-known that the minimum-size set cover problem with halfplanes can be solved in polynomial time. We also consider a problem closely related to MMGSC, called minimum-ply geometric set cover (MPGSC), in which the goal is to find $\mathcal{R}*\subseteq\mathcal{R}$ to cover $S$ such that the ply of $\mathcal{R}*$ is minimized, where the ply is defined as the maximum number of objects in $\mathcal{R}*$ which have a nonempty common intersection. Very recently, Durocher et al. gave the first constant-approximation algorithm for MPGSC with unit squares which runs in $O(n{12})$ time. We give a significantly simpler constant-approximation algorithm with near-linear running time.
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