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김성일

Kim, Sungil
Data Analytics Lab.
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A practical approach to measuring the impacts of stockouts on demand

Author(s)
Kim, SungilKim, HeeyoungLu, Jye-Chyi
Issued Date
2019-06
DOI
10.1108/jbim-04-2018-0126
URI
https://scholarworks.unist.ac.kr/handle/201301/26856
Fulltext
https://www.emerald.com/insight/content/doi/10.1108/JBIM-04-2018-0126/full/html
Citation
JOURNAL OF BUSINESS & INDUSTRIAL MARKETING, v.34, no.4, pp.891 - 901
Abstract
Purpose: This paper aims to propose a statistical method to measure the impacts of stockouts on demand, using a segmented linear regression model.
Design/methodology/approach: The proposed method is applied to data sets from large retail chains to measure the impacts of stockouts of an item on substitute items. The measured impacts of stockouts can be used to estimate the true demand of the sold-out item by recovering the lost demand (turned-away demand), as well as to estimate the true demand of the substitute item by reducing the extra demand.
Findings: This study found that estimated true demand by the proposed method improves sales forecasting and calculation of the annual expected revenue.
Originality/value: A new method to measure the impacts of stockouts on the demand of substitute items was proposed. The proposed method is practical, in that, it is conceptually simple, computationally efficient and applicable in general scenarios. Also, the proposed method is scalable for larger data sets.
Publisher
Emerald Group Publishing Ltd.
ISSN
0885-8624
Keyword (Author)
RetailingSegmented linear regressionStochout effectsPractical applications

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