Online Minimum Spanning Trees with Weight Predictions

Magnus Berg, J. Boyar, Lene M. Favrholdt, Kim S. Larsen
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引用次数: 2

Abstract

We consider the minimum spanning tree problem with predictions, using the weight-arrival model, i.e., the graph is given, together with predictions for the weights of all edges. Then the actual weights arrive one at a time and an irrevocable decision must be made regarding whether or not the edge should be included into the spanning tree. In order to assess the quality of our algorithms, we define an appropriate error measure and analyze the performance of the algorithms as a function of the error. We prove that, according to competitive analysis, the simplest algorithm, Follow-the-Predictions, is optimal. However, intuitively, one should be able to do better, and we present a greedy variant of Follow-the-Predictions. In analyzing that algorithm, we believe we present the first random order analysis of a non-trivial online algorithm with predictions, by which we obtain an algorithmic separation. This may be useful for distinguishing between algorithms for other problems when Follow-the-Predictions is optimal according to competitive analysis.
具有权重预测的在线最小生成树
我们考虑带有预测的最小生成树问题,使用权值到达模型,即给定图,并对所有边的权值进行预测。然后每次得到一个实际权值,并且必须对是否将该边包含到生成树中做出不可撤销的决定。为了评估我们算法的质量,我们定义了一个适当的误差度量,并分析了算法的性能作为误差的函数。我们证明,根据竞争分析,最简单的算法,跟随预测,是最优的。然而,凭直觉,一个人应该能够做得更好,我们提出了一个贪婪的变体跟随预测。在分析该算法时,我们认为我们提出了具有预测的非平凡在线算法的第一个随机顺序分析,通过该分析我们获得了算法分离。当根据竞争分析,follow -the- prediction是最优时,这可能有助于区分其他问题的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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