The submodular joint replenishment problem

被引:0
|
作者
Maurice Cheung
Adam N. Elmachtoub
Retsef Levi
David B. Shmoys
机构
[1] Cornell University,School of Operations Research and Information Engineering
[2] Columbia University,Department of Industrial Engineering and Operations Research
[3] Massachusetts Institute of Technology,Sloan School of Management
[4] Cornell University,Department of Computer Science and School of Operations Research and Information Engineering
来源
Mathematical Programming | 2016年 / 158卷
关键词
Inventory management; Approximation algorithm; Submodular function; Joint replenishment problem; 90B30; 90B05;
D O I
暂无
中图分类号
学科分类号
摘要
The joint replenishment problem is a fundamental model in supply chain management theory that has applications in inventory management, logistics, and maintenance scheduling. In this problem, there are multiple item types, each having a given time-dependent sequence of demands that need to be satisfied. In order to satisfy demand, orders of the item types must be placed in advance of the due dates for each demand. Every time an order of item types is placed, there is an associated joint setup cost depending on the subset of item types ordered. This ordering cost can be due to machine, transportation, or labor costs, for example. In addition, there is a cost to holding inventory for demand that has yet to be served. The overall goal is to minimize the total ordering costs plus inventory holding costs. In this paper, the cost of an order, also known as a joint setup cost, is a monotonically increasing, submodular function over the item types. For this general problem, we show that a greedy approach provides an approximation guarantee that is logarithmic in the number of demands. Then we consider three special cases of submodular functions which we call the laminar, tree, and cardinality cases, each of which can model real world scenarios that previously have not been captured. For each of these cases, we provide a constant factor approximation algorithm. Specifically, we show that the laminar case can be solved optimally in polynomial time via a dynamic programming approach. For the tree and cardinality cases, we provide two different linear programming based approximation algorithms that provide guarantees of three and five, respectively.
引用
收藏
页码:207 / 233
页数:26
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