Improved Analysis of two Algorithms for Min-Weighted Sum Bin Packing

G. Sagnol
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引用次数: 1

Abstract

We study the Min-Weighted Sum Bin Packing problem, a variant of the classical Bin Packing problem in which items have a weight, and each item induces a cost equal to its weight multiplied by the index of the bin in which it is packed. This is in fact equivalent to a batch scheduling problem that arises in many fields of applications such as appointment scheduling or warehouse logistics. We give improved lower and upper bounds on the approximation ratio of two simple algorithms for this problem. In particular, we show that the knapsack-batching algorithm, which iteratively solves knapsack problems over the set of remaining items to pack the maximal weight in the current bin, has an approximation ratio of at most 17/10.
最小加权和装箱两种算法的改进分析
我们研究了最小加权和装箱问题,这是经典装箱问题的一个变体,其中每个物品都有一个重量,并且每个物品的成本等于它的重量乘以它所在的箱子的索引。这实际上相当于在许多应用程序领域(如预约调度或仓库物流)中出现的批调度问题。对这一问题给出了改进的两种简单算法的近似比下界和上界。特别是,我们证明了背包批处理算法,迭代地解决背包问题,在当前箱子中包装最大重量的剩余物品集上,其近似比率最多为17/10。
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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