季节性消费品的需求学习与动态分类

Dynamic Assortment with Demand Learning for Seasonal Consumer Goods

Management Science · 2007
被引 318 · 同刊同年前 8%
人大 A+FT50UTD24ABS 4*

中文导读

研究季节性消费品零售商如何在销售季中根据实时需求信息动态调整产品分类以最大化利润,提出一个易于实施和解释的闭环动态指标策略,并给出次优性界限。

Abstract

Companies such as Zara and World Co. have recently implemented novel product development processes and supply chain architectures enabling them to make more product design and assortment decisions during the selling season, when actual demand information becomes available. How should such retail firms modify their product assortment over time in order to maximize overall profits for a given selling season? Focusing on a stylized version of this problem, we study a finite horizon multiarmed bandit model with several plays per stage and Bayesian learning. Our analysis involves the Lagrangian relaxation of weakly coupled dynamic programs (DPs), results contributing to the emerging theory of DP duality, and various approximations. It yields a closed-form dynamic index policy capturing the key exploration versus exploitation trade-off and associated suboptimality bounds. In numerical experiments its performance proves comparable to that of other closed-form heuristics described in the literature, but this policy is particularly easy to implement and interpret. This last feature enables extensions to more realistic versions of the motivating dynamic assortment problem that include implementation delays, switching costs, and demand substitution effects.

动态品类优化需求学习季节性消费品多臂老虎机模型