Scheduling Two Agents on a Single Machine: A Parameterized Analysis of NP-hard Problems
September 13, 2017 Β· Declared Dead Β· π Omega
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Authors
Danny Hermelin, Judith-Madeleine Kubitza, Dvir Shabtay, Nimrod Talmon, Gerhard Woeginger
arXiv ID
1709.04161
Category
cs.DS: Data Structures & Algorithms
Citations
24
Venue
Omega
Last Checked
3 months ago
Abstract
Scheduling theory is an old and well-established area in combinatorial optimization, whereas the much younger area of parameterized complexity has only recently gained the attention of the community. Our aim is to bring these two areas closer together by studying the parameterized complexity of a class of single-machine two-agent scheduling problems. Our analysis focuses on the case where the number of jobs belonging to the second agent is considerably smaller than the number of jobs belonging to the first agent, and thus can be considered as a fixed parameter k. We study a variety of combinations of scheduling criteria for the two agents, and for each such combination we pinpoint its parameterized complexity with respect to the parameter k. The scheduling criteria that we analyze include the total weighted completion time, the total weighted number of tardy jobs, and the total weighted number of just-in-time jobs. Our analysis draws a borderline between tractable and intractable variants of these problems.
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