Learning to Price Supply Chain Contracts against a Learning Retailer
Xuejun Zhao, Ruihao Zhu, William B. Haskell

TL;DR
This paper develops data-driven dynamic pricing policies for a supplier in a supply chain where both the supplier and retailer learn demand over time, ensuring sublinear regret bounds across various retailer learning strategies.
Contribution
It introduces a novel framework connecting supply chain contract design with non-stationary online learning, providing robust pricing policies without prior knowledge of demand or retailer strategies.
Findings
Proposed pricing policies achieve sublinear regret bounds.
Policies work under multiple retailer learning strategies.
No prior demand distribution knowledge needed.
Abstract
The rise of big data analytics has automated the decision-making of companies and increased supply chain agility. In this paper, we study the supply chain contract design problem faced by a data-driven supplier who needs to respond to the inventory decisions of the downstream retailer. Both the supplier and the retailer are uncertain about the market demand and need to learn about it sequentially. The goal for the supplier is to develop data-driven pricing policies with sublinear regret bounds under a wide range of possible retailer inventory policies for a fixed time horizon. To capture the dynamics induced by the retailer's learning policy, we first make a connection to non-stationary online learning by following the notion of variation budget. The variation budget quantifies the impact of the retailer's learning strategy on the supplier's decision-making. We then propose dynamic…
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Taxonomy
TopicsSupply Chain and Inventory Management · Advanced Bandit Algorithms Research · Forecasting Techniques and Applications
