A shelf-space optimization model when demand is stochastic and space-elastic

The more customer demand is impulse-driven, the more it is space-dependent and the more it is subject to variation. We investigate the corresponding problem of retail shelf-space planning when demand is stochastic and sensitive to the number and position of facings. We develop a model to maximize a...

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Bibliographic Details
Published inOmega (Oxford) Vol. 68; pp. 139 - 154
Main Authors Hübner, Alexander, Schaal, Kai
Format Journal Article
LanguageEnglish
Published Elsevier Ltd 01.04.2017
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ISSN0305-0483
1873-5274
1873-5274
DOI10.1016/j.omega.2016.07.001

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Summary:The more customer demand is impulse-driven, the more it is space-dependent and the more it is subject to variation. We investigate the corresponding problem of retail shelf-space planning when demand is stochastic and sensitive to the number and position of facings. We develop a model to maximize a retailer׳s profit by selecting the number of facings and their shelf position under the assumption of limited space. The model is particularly applicable to promotional or temporary products. We develop the first optimization model and solution approach that takes stochastic demand into account, since the current literature applies deterministic models for shelf-space planning. By the means of an innovative modeling approach for the case with space- and positioning effects and the conversion of our problem into a mixed-integer problem, we obtain optimal results within very short run times for large-scale instances relevant in practice. Furthermore, we develop a solution approach to account for cross-space elasticity, and solve it using an own heuristic, which efficiently yields near-optimal results. We demonstrate that correctly considering space elasticity and demand variation is essential. The corresponding impacts on profits and solution structures become even more significant when space elasticity and stochastic demand interact, resulting in up to 5% higher profits and up to 80% differences in solution structures, if both effects are correctly accounted for. We develop an efficient modeling approach, compare the model results with approaches applied in practice and derive rules-of-thumb for planners. •Shelf space planning is a mid-term planning activity relevant in daily retail operations.•Stochastic and space-elastic demand are characteristics relevant for impulse driven purchases•The first model for space-elastic and stochastic demand and an efficient solution approach.•Numerical tests to show the impact when demand is stochastic and space elastic
ISSN:0305-0483
1873-5274
1873-5274
DOI:10.1016/j.omega.2016.07.001