背景(考古学)
业务
供应链
营销
主题分析
独创性
供应链管理
存货计价
运营管理
定性研究
经济
古生物学
社会科学
社会学
生物
会计
作者
Haya Esrar,Hossein Zolfagharinia,Hong Yu
出处
期刊:Benchmarking: An International Journal
[Emerald (MCB UP)]
日期:2022-06-14
卷期号:30 (7): 2458-2485
被引量:1
标识
DOI:10.1108/bij-11-2021-0716
摘要
Purpose Managing inventory continues to be a growing area of concern for many retailers due to the multitude of issues that arise from either an excess or shortage of inventory. This study aims to understand how a large-scale retail chain can improve its handling of excess seasonal inventory using three common strategies: information sharing, visibility, and collaboration. Design/methodology/approach This study has been designed utilizing a case study method focusing on one retail chain at three key levels: strategic (head office), warehouses, and retail stores. The data have been collected by conducting semi-structured interviews with senior-level employees at each of the three levels and employing a thematic analysis to examine the major themes. Findings The results show how three common strategies are being practiced by this retailer and how utilizing these strategies aids the retailer in improving its performance in regard to seasonal inventory. Among our research findings, some challenges were discovered in implementing the strategies, most notably: human errors, advanced forecasting deficiencies, and the handling of return merchandise authorizations. Originality/value This research takes a case study approach and focuses on one big-box retailer. The authors chose to study three levels (head office, warehouses, and retail stores) to gain a deeper understanding of the functions and processes of each level, and to understand the working relationships between them. Through the collection of primary data in a Canadian context, this study contributes to the literature by investigating supply chain strategies for managing inventory. The Canadian context is especially interesting due to the multi-cultural demographics of the country.
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