Scheduling Maintenance Jobs in Networks
January 30, 2017 Β· Declared Dead Β· π International/Italian Conference on Algorithms and Complexity
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Authors
Fidaa Abed, Lin Chen, Yann Disser, Martin GroΓ, Nicole Megow, Julie MeiΓner, Alexander T. Richter, Roman Rischke
arXiv ID
1701.08809
Category
cs.DS: Data Structures & Algorithms
Citations
9
Venue
International/Italian Conference on Algorithms and Complexity
Last Checked
4 months ago
Abstract
We investigate the problem of scheduling the maintenance of edges in a network, motivated by the goal of minimizing outages in transportation or telecommunication networks. We focus on maintaining connectivity between two nodes over time; for the special case of path networks, this is related to the problem of minimizing the busy time of machines. We show that the problem can be solved in polynomial time in arbitrary networks if preemption is allowed. If preemption is restricted to integral time points, the problem is NP-hard and in the non-preemptive case we give strong non-approximability results. Furthermore, we give tight bounds on the power of preemption, that is, the maximum ratio of the values of non-preemptive and preemptive optimal solutions. Interestingly, the preemptive and the non-preemptive problem can be solved efficiently on paths, whereas we show that mixing both leads to a weakly NP-hard problem that allows for a simple 2-approximation.
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