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The impact of practitioner business rules on the optimality of a static retail revenue management system

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The impact of practitioner business rules on the optimality of a static retail revenue management system. / Kunz, Timo P.; Crone, Sven Friedrich Werner Manfred.
In: Journal of Revenue and Pricing Management, Vol. 14, No. 3, 06.2015, p. 198-210.

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Kunz TP, Crone SFWM. The impact of practitioner business rules on the optimality of a static retail revenue management system. Journal of Revenue and Pricing Management. 2015 Jun;14(3):198-210. doi: 10.1057/rpm.2015.10

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Kunz, Timo P. ; Crone, Sven Friedrich Werner Manfred. / The impact of practitioner business rules on the optimality of a static retail revenue management system. In: Journal of Revenue and Pricing Management. 2015 ; Vol. 14, No. 3. pp. 198-210.

Bibtex

@article{a989cb3884ac48b7ab68c733acafe560,
title = "The impact of practitioner business rules on the optimality of a static retail revenue management system",
abstract = "Retailers engaging in revenue management rarely implement theoretically optimal prices from an optimisation system directly. Rather, they adjust these with business rules – simple empirical guidelines derived from best practices – such as using discrete price points ending in {\textquoteleft}9{\textquoteright}. Similarly, competing objectives of maximizing sales or store visits are regularly considered, which may contrast the profit optimal solution. Although these rules obviously constrain the solution space for the price optimization, little is known about their consequences on overall profits. This study provides an empirical analysis on the impact of commonly used business rules of using (i) discrete price points, (ii) maximum price moves, (iii) corridor pricing and (iv) passive pricing on the size and the quality of the problem{\textquoteright}s solution space and their monetary impact. As expected, we find that each additional business rule further constrains the solution space, offering fewer valid price vectors. However, while the combinations of multiple rules substantially reduce the solution space and yields suboptimal solutions that deviate up to 20 per cent from the profit maximum, the application of only individual rules will still provide some optimal solutions. At the same time, business rules enable the estimation of larger assortment subcategories, which allow results more representative for retail practices. This suggests that price vectors which reflect business rules allow not only an increased adherence to business reality, but may lead to little or no deviation from the optimal solution for larger assortments than in unconstrained optimization systems.",
keywords = "retail revenue management, price optimisation, business rules, retail strategy",
author = "Kunz, {Timo P.} and Crone, {Sven Friedrich Werner Manfred}",
year = "2015",
month = jun,
doi = "10.1057/rpm.2015.10",
language = "English",
volume = "14",
pages = "198--210",
journal = "Journal of Revenue and Pricing Management",
issn = "1476-6930",
publisher = "Palgrave Macmillan Ltd.",
number = "3",

}

RIS

TY - JOUR

T1 - The impact of practitioner business rules on the optimality of a static retail revenue management system

AU - Kunz, Timo P.

AU - Crone, Sven Friedrich Werner Manfred

PY - 2015/6

Y1 - 2015/6

N2 - Retailers engaging in revenue management rarely implement theoretically optimal prices from an optimisation system directly. Rather, they adjust these with business rules – simple empirical guidelines derived from best practices – such as using discrete price points ending in ‘9’. Similarly, competing objectives of maximizing sales or store visits are regularly considered, which may contrast the profit optimal solution. Although these rules obviously constrain the solution space for the price optimization, little is known about their consequences on overall profits. This study provides an empirical analysis on the impact of commonly used business rules of using (i) discrete price points, (ii) maximum price moves, (iii) corridor pricing and (iv) passive pricing on the size and the quality of the problem’s solution space and their monetary impact. As expected, we find that each additional business rule further constrains the solution space, offering fewer valid price vectors. However, while the combinations of multiple rules substantially reduce the solution space and yields suboptimal solutions that deviate up to 20 per cent from the profit maximum, the application of only individual rules will still provide some optimal solutions. At the same time, business rules enable the estimation of larger assortment subcategories, which allow results more representative for retail practices. This suggests that price vectors which reflect business rules allow not only an increased adherence to business reality, but may lead to little or no deviation from the optimal solution for larger assortments than in unconstrained optimization systems.

AB - Retailers engaging in revenue management rarely implement theoretically optimal prices from an optimisation system directly. Rather, they adjust these with business rules – simple empirical guidelines derived from best practices – such as using discrete price points ending in ‘9’. Similarly, competing objectives of maximizing sales or store visits are regularly considered, which may contrast the profit optimal solution. Although these rules obviously constrain the solution space for the price optimization, little is known about their consequences on overall profits. This study provides an empirical analysis on the impact of commonly used business rules of using (i) discrete price points, (ii) maximum price moves, (iii) corridor pricing and (iv) passive pricing on the size and the quality of the problem’s solution space and their monetary impact. As expected, we find that each additional business rule further constrains the solution space, offering fewer valid price vectors. However, while the combinations of multiple rules substantially reduce the solution space and yields suboptimal solutions that deviate up to 20 per cent from the profit maximum, the application of only individual rules will still provide some optimal solutions. At the same time, business rules enable the estimation of larger assortment subcategories, which allow results more representative for retail practices. This suggests that price vectors which reflect business rules allow not only an increased adherence to business reality, but may lead to little or no deviation from the optimal solution for larger assortments than in unconstrained optimization systems.

KW - retail revenue management

KW - price optimisation

KW - business rules

KW - retail strategy

U2 - 10.1057/rpm.2015.10

DO - 10.1057/rpm.2015.10

M3 - Journal article

VL - 14

SP - 198

EP - 210

JO - Journal of Revenue and Pricing Management

JF - Journal of Revenue and Pricing Management

SN - 1476-6930

IS - 3

ER -