Structural Parameters for Scheduling with Assignment Restrictions
January 25, 2017 Β· Declared Dead Β· π International/Italian Conference on Algorithms and Complexity
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Authors
Klaus Jansen, Marten Maack, Roberto Solis-Oba
arXiv ID
1701.07242
Category
cs.DS: Data Structures & Algorithms
Citations
12
Venue
International/Italian Conference on Algorithms and Complexity
Last Checked
4 months ago
Abstract
We consider scheduling on identical and unrelated parallel machines with job assignment restrictions. These problems are NP-hard and they do not admit polynomial time approximation algorithms with approximation ratios smaller than $1.5$ unless P$=$NP. However, if we impose limitations on the set of machines that can process a job, the problem sometimes becomes easier in the sense that algorithms with approximation ratios better than $1.5$ exist. We introduce three graphs, based on the assignment restrictions and study the computational complexity of the scheduling problem with respect to structural properties of these graphs, in particular their tree- and rankwidth. We identify cases that admit polynomial time approximation schemes or FPT algorithms, generalizing and extending previous results in this area.
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