Publication | Closed Access
Approximation Algorithms for the Stochastic Lot-Sizing Problem with Order Lead Times
57
Citations
22
References
2013
Year
Mathematical ProgrammingEngineeringComputational ComplexityDiscrete OptimizationOperations ResearchInventory ManagementUncertainty QuantificationInventory ControlSystems EngineeringDiscrete MathematicsCombinatorial OptimizationApproximation TheoryQuantitative ManagementStochastic SystemSorting AlgorithmCombinatorial ProblemNew Algorithmic ApproachesComputer ScienceApproximation AlgorithmsProbability TheoryDecision RuleStochastic Lot-sizing ProblemStochastic OptimizationOptimization ProblemBusinessOrder Lead TimesNew AlgorithmicApproximation Method
We develop new algorithmic approaches to compute provably near-optimal policies for multiperiod stochastic lot-sizing inventory models with positive lead times, general demand distributions, and dynamic forecast updates. The policies that are developed have worst-case performance guarantees of 3 and typically perform very close to optimal in extensive computational experiments. The newly proposed algorithms employ a novel randomized decision rule. We believe that these new algorithmic and performance analysis techniques could be used in designing provably near-optimal randomized algorithms for other stochastic inventory control models and more generally in other multistage stochastic control problems.
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