IEOR-DRO Seminar: Cong Shi (University of Michigan)

April 18, 2017 | 1:10pm - 2:10pm

IEOR-DRO Seminar: Cong Shi (University of Michigan)

Mudd Hall 303
 
Title: Nonparametric Learning Algorithms for Pricing and Inventory Control Problems

Abstract: In recent years, online retailing firms have been experimenting and implementing innovative dynamic pricing strategies and inventory policies to better match demand with supply. In many cases, the decision maker may not know the demand distributional information of a given product a priori, and can only collect observed sales data or censored demand data over time. The key challenge is that the collected data is affected by the operational decisions by the decision maker, which then affects the decision maker's understanding of the underlying system in making new operational decisions.  In this talk, we propose new nonparametric learning algorithms for several fundamental models with unknown demand functions under censored demand information, including the periodic-review perishable inventory problem, the lost-sales inventory problem, and the joint pricing and inventory control problem. The performance measure is regret, which is the cost difference between a feasible learning algorithm and the clairvoyant (full-information) benchmark. We show that the proposed algorithms converge to the clairvoyant optimal policies as the planning horizon increases, and obtain the convergence rate of regret. The techniques developed are effective for learning a stochastic system with complex systems dynamics and lasting impact on decisions.
 
This talk is based on joint work with Xiuli Chao, Beryl Chen, and Huanan Zhang.
 
Bio: Cong Shi is an assistant professor in the Department of Industrial and Operations Engineering at the University of Michigan. Before that, he obtained his Ph.D. from the Operations Research Center at Massachusetts Institute of Technology (MIT ORC), and received the first place in INFORMS George Nicholson Student Paper Competition. He is interested in developing algorithmic approaches to inventory and supply chain management, revenue management, and service operations.
 
Please note that cookies are back!


500 W. 120th St., Mudd 315, New York, NY 10027    212-854-2942                 
©2014 Columbia University