中国科学院大学MBA教育管理中心 科苑经管国际学术论坛】Zhi Chen:Sharing the Value-at-Risk under Distributional Ambiguity(12月14日) - 中国科学院大学MBA教育管理中心

科苑经管国际学术论坛】Zhi Chen:Sharing the Value-at-Risk under Distributional Ambiguity(12月14日)

  • 日期:2019-12-09

 

讲座题目:Sharing the Value-at-Risk under Distributional Ambiguity

主讲嘉宾:Prof. Zhi Chen,College of Business, City University of Hong Kong

讲座时间:2019年12月14日下午2:00-4:00

讲座地点:中国科学院大学中关村校区

 

Abstract::We consider the problem of risk sharing, where a coalition of homogeneous agents, each bearing a random cost, aggregates their costs and shares the value-at-risk of such a risky position. Due to limited distributional information in practice, the joint distribution of agents' random costs is difficult to acquire. The coalition, being aware of the distributional ambiguity, thus evaluates the worst-case value-at-risk within a commonly agreed ambiguity set of the possible joint distributions. Through the lens of cooperative game theory, we show that this coalitional worst-case value-at-risk is subadditive for the popular ambiguity sets in the distributionally robust optimization literature that are based on convex moments or Wasserstein distance to some reference distributions. In addition, we propose easy-to-compute core allocation schemes to share the worst-case value-at-risk. Our results can be readily extended to sharing the worst-case conditional value-at-risk under distributional ambiguity.

 

Bio:Zhi Chen is an Assistant Professor in the Department of Management Sciences, College of Business, City University of Hong Kong. He obtained a Bachelor of Engineering degree from Tsinghua University in China, and he holds a PhD degree in Management from the National University of Singapore. He was a postdoctoral research associate in the Department of Management at the Imperial College Business School. His research interests include (1) decision-making under uncertainty with different levels of data availability and its applications in decision analysis, operations management, and engineering; (2) cooperative game theory for joint activities and its applications in production economics, resource pooling, and risk management.