自相残杀
产品(数学)
利润(经济学)
业务
服务(商务)
大数据
产业组织
营销
商业
计算机科学
经济
微观经济学
数学
数据挖掘
几何学
作者
Bin Shen,Tsan‐Ming Choi,Hau‐Ling Chan
标识
DOI:10.1016/j.techfore.2017.09.003
摘要
Nowadays, retailers sell both green and non-green products to consumers. In many real world retailing businesses, owing to shelf-space limits and to avoid cannibalization between products, retailers only sell either the green or the non-green product but not both at the same time. Then, an important question arises: Should the retailer sell the green product first or not? This question is critical in the big data era because the retailer can use advanced technologies to collect a massive amount of demand data of the product sold first and then update the demand forecast for the forthcoming product, which improves its retail business performance and services. In this paper, by constructing a Bayesian information inventory updating model, we identify the analytical conditions for the retailer to decide the optimal selling sequence. Moreover, we uncover that when the green product's service level is lower than the non-green one's, selling the green product first surely produces a lower environmental cost. However, when the green product's service level is higher than the non-green one's, selling the green product first does not always produce a lower environmental cost. Furthermore, we investigate the impact of big data on the profit improvement and the environmental cost improvement, and its relationship with the optimal selling sequence.
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