Scheduling to Minimize Total Weighted Completion Time via Time-Indexed Linear Programming Relaxations

Shi Li
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引用次数: 45

Abstract

We study approximation algorithms for scheduling problems with the objective of minimizing total weighted completion time, under identical and related machine models with job precedence constraints. We give algorithms that improve upon many previous 15 to 20-year-old state-of-art results. A major theme in these results is the use of time-indexed linear programming relaxations. These are natural relaxations for their respective problems, but surprisingly are not studied in the literature.We also consider the scheduling problem of minimizing total weighted completion time on unrelated machines. The recent breakthrough result of [Bansal-Srinivasan-Svensson, STOC 2016] gave a (1.5-c)-approximation for the problem, based on some lift-and-project SDP relaxation. Our main result is that a (1.5 - c)-approximation can also be achieved using a natural and considerably simpler time-indexed LP relaxation for the problem. We hope this relaxation can provide new insights into the problem.
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利用时间索引线性规划松弛最小化总加权完工时间的调度
在具有工作优先级约束的相同和相关机器模型下,研究以最小化总加权完成时间为目标的调度问题的逼近算法。我们给出的算法改进了许多15到20年前的最先进的结果。这些结果的一个主要主题是使用时间索引线性规划松弛。这些都是针对各自问题的自然放松,但令人惊讶的是,并没有在文献中进行研究。我们还考虑了在不相关机器上最小化总加权完成时间的调度问题。最近的突破性成果[Bansal-Srinivasan-Svensson, STOC 2016]基于一些抬升和项目SDP松弛,给出了这个问题的(1.5 c)近似。我们的主要结果是(1.5 - c)近似也可以使用自然的和相当简单的时间索引LP松弛来实现。我们希望这种放松可以为这个问题提供新的见解。
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