Constant Approximation algorithm for non-uniform capacitated multi-item lot-sizing via strong covering inequalities

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Abstract

We study the non-uniform capacitated multi-item lot-sizing (CMILS) problem. In this problem, there is a set of demands over a planning horizon of T time periods and all demands must be satisfied on time. We can place an order at the beginning of each period s, incurring an ordering cost Ks. The total quantity of all products ordered at time s can not exceed a given capacity Cs. On the other hand, carrying inventory from time to time incurs inventory holding cost. The goal of the problem is to find a feasible solution that minimizes the sum of ordering and holding costs. Levi et al. (Levi, Lodi and Sviridenko, Mathsmatics of Operations Research 33(2), 2008) gave a 2-approximation for the problem when the capacities Cs are the same. In this paper, we extend their re- sult to the case of non-uniform capacities. That is, we give a constant approximation algorithm for the ca- pacitated multi-item lot-sizing problem with general capacities. The constant approximation is achieved by adding an exponentially large set of new covering in- equalities to the natural facility-location type linear programming relaxation for the problem. Along the way of our algorithm, we reduce the CMILS problem to two generalizations of the classic knapsack covering problem. We give LP-based constant approximation algorithms for both generalizations, via the iterative rounding technique.

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APA

Li, S. (2017). Constant Approximation algorithm for non-uniform capacitated multi-item lot-sizing via strong covering inequalities. In Proceedings of the Annual ACM-SIAM Symposium on Discrete Algorithms (Vol. 0, pp. 2311–2325). Association for Computing Machinery. https://doi.org/10.1137/1.9781611974782.152

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