Fair Hitting Sequence Problem: Scheduling Activities with Varied Frequency Requirements



Cicerone, Serafino, Di Stefano, Gabriele, Gasieniec, Leszek ORCID: 0000-0003-1809-9814, Jurdzinski, Tomasz, Navarra, Alfredo, Radzik, Tomasz and Stachowiak, Grzegorz
(2019) Fair Hitting Sequence Problem: Scheduling Activities with Varied Frequency Requirements. In: 11th International Conference on Algorithms and Complexity, CIAC 2019, 2019-5-27 - 2019-5-29, Rome, Italy.

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Abstract

Given a set of n elements and a family of (possibly intersecting) subsets of V, we consider a scheduling problem of perpetual monitoring (attending) these subsets. In each time step one element of V is visited, and all sets in containing v are considered to be attended during this step. That is, we assume that it is enough to visit an arbitrary element in to attend to this whole set. Each set has an urgency factor , which indicates how frequently this set should be attended relatively to other sets. Let denote the time slot when set is attended for the i-th time. The objective is to find a perpetual schedule of visiting the elements of V, so that the maximum value is minimized. The value indicates how urgent it was to attend to set at the time slot. We call this problem the Fair Hitting Sequence (FHS) problem, as it is related to the minimum hitting set problem. In fact, the uniform FHS, when all urgency factors are equal, is equivalent to the minimum hitting set problem, implying that there is a constant such that it is NP-hard to compute -approximation schedules for FHS. We demonstrate that scheduling based on one hitting set can give poor approximation ratios, even if an optimal hitting set is used. To counter this, we design a deterministic algorithm which partitions the family into sub-families and combines hitting sets of those sub-families, giving -approximate schedules. Finally, we show an LP-based lower bound on the optimal objective value of FHS and use this bound to derive a randomized algorithm which with high probability computes -approximate schedules.

Item Type: Conference or Workshop Item (Unspecified)
Depositing User: Symplectic Admin
Date Deposited: 02 Jan 2019 14:45
Last Modified: 19 Jan 2023 01:08
DOI: 10.1007/978-3-030-17402-6_15
Related URLs:
URI: https://livrepository.liverpool.ac.uk/id/eprint/3030381