Data-Driven Decision Making with Safety Guarantee
Abstract

In many real-world applications, decision makers usually need to make better decisions without the precise knowledge of the uncertainty. With limited amount of data, distributionally robust chance-constrained optimization (DRC) becomes a powerful tool for decision making because it alleviates the ambiguity in distribution by protecting the optimal solution against a family of candidate distributions, and thus generalizes better when previously unseen samples arise. However, DRC models are usually very hard to solve in general. Therefore, in this talk, I will seek to answer the following two questions: (1) how can we solve DRCs more efficiently, and (2) when are DRCs convex and/or tractable? For DRCs with a covering structure, which arise frequently in facility location, scheduling, production planning, and vehicle routing, we establish their NP-hardness, propose a two-stage reformulation and derive families of strong valid inequalities. For general DRCs, we uncover a set of sufficient conditions under which DRCs produce a convex feasible region and design efficient algorithms for solving such convex DRCs. We will demonstrate the effectiveness of our proposed solution approaches in multiple real-world applications including emergency medical facility location problem, optimal power flow problem, and the planning of charging stations for battery electric buses.

 

Speaker: Mr Haoming SHEN
Date: 9 January 2023 (Monday)
Time: 9:30am – 10:30am
PosterClick here

 

Biography

Mr Haoming Shen is a Ph.D. Candidate in the Department of Industrial and Operations Engineering at the University of Michigan, where he is advised by Professor Ruiwei Jiang.
His research focuses on data-driven optimization under uncertainty with applications to robotics, power grids, and transportation systems. He has received the honorable mention award in 2022 INFORMS Optimization Society Best Student Paper Competition.