Set Covering with Our Eyes Wide Shut

Abstract

In the stochastic set cover problem (Grandoni et al., FOCS '08), we are given a collection S of m sets over a universe U of size N, and a distribution D over elements of U. The algorithm draws n elements one-by-one from D and must buy a set to cover each element on arrival; the goal is to minimize the total cost of sets bought during this process. A universal algorithm a priori maps each element u ∈ U to a set S(u) such that if U ⊂eq U is formed by drawing n times from distribution D, then the algorithm commits to outputting S(U). Grandoni et al. gave an O( mN)-competitive universal algorithm for this stochastic set cover problem. We improve unilaterally upon this result by giving a simple, polynomial time O( mn)-competitive universal algorithm for the more general prophet version, in which U is formed by drawing from n different distributions D1, …, Dn. Furthermore, we show that we do not need full foreknowledge of the distributions: in fact, a single sample from each distribution suffices. We show similar results for the 2-stage prophet setting and for the online-with-a-sample setting. We obtain our results via a generic reduction from the single-sample prophet setting to the random-order setting; this reduction holds for a broad class of minimization problems that includes all covering problems. We take advantage of this framework by giving random-order algorithms for non-metric facility location and set multicover; using our framework, these automatically translate to universal prophet algorithms.

0

Turn this paper into a lesson

ArcXiv compiles a structured reading guide from this paper's metadata: plain-English importance, contributions, prerequisite concepts, which sections to read first, flashcards, and a quiz. Grounded in the abstract, never invented.

Discussion (0)

Sign in to join the discussion.

Loading comments…