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Towards auction algorithms for large dense assignment problems

机译:面向大型密集分配问题的拍卖算法

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In this paper, we focus on the problem of solving large-scale instances of the linear sum assignment problem by auction algorithms. We introduce a modified auction algorithm, called look-back auction algorithm, which extends the forward auction algorithm by the ability of reusing information from previous bids. We show that it is able to reuse information from the previous bids with high efficiency for all tested types of input instances. We discuss then the design and implementation of a suite of sequential and distributed memory auction algorithms on a Linux cluster with the evaluation on several types of input instances of the linear sum assignment problem. Our results show that the look-back auction algorithm solves sequentially nearly all types of dense instances faster than other evaluated algorithms and it is more stable than the forward-reverse auction algorithm for sparse instances. Our distributed memory auction algorithms are fully memory scalable.
机译:在本文中,我们着重于通过拍卖算法解决线性和分配问题的大规模实例的问题。我们引入了一种改进的拍卖算法,称为回溯拍卖算法,它通过重用先前出价中的信息的能力扩展了正向拍卖算法。我们证明了它能够针对所有测试类型的输入实例高效地重用先前出价中的信息。然后,我们讨论在Linux集群上的一系列顺序和分布式内存拍卖算法的设计和实现,并对线性和分配问题的几种类型的输入实例进行评估。我们的结果表明,回溯拍卖算法比其他评估算法更快地顺序解决了几乎所有类型的密集实例,并且对于稀疏实例,它比向前-反向拍卖算法更稳定。我们的分布式内存拍卖算法具有完全的内存可扩展性。

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