A Composite Risk Measure Framework for Decision Making under Uncertainty
In this paper, we present a unified framework for decision making under uncertainty. Our framework is based on the composite of two risk measures, where the inner risk measure accounts for the risk of decision given the exact distribution of uncertain model parameters, and the outer risk measure quantifies the risk that occurs when estimating the parameters of distribution. We show that the model is tractable under mild conditions. The framework is a generalization of several existing models, including stochastic programming, robust optimization, distributionally robust optimization, etc. Using this framework, we study a few new models which imply probabilistic guarantees for solutions and yield less conservative results comparing to traditional models. Numerical experiments are performed on portfolio selection problems to demonstrate the strength of our models.
Year of publication: |
2015-01
|
---|---|
Authors: | Qian, Pengyu ; Wang, Zizhuo ; Wen, Zaiwen |
Institutions: | arXiv.org |
Saved in:
Saved in favorites
Similar items by person
-
Asset Allocation under the Basel Accord Risk Measures
Wen, Zaiwen, (2013)
-
A Unified Framework for Dynamic Pari-Mutuel Information Market Design
Agrawal, Shipra, (2009)
-
Price Discovery in Waiting Lists
Ashlagi, Itai, (2022)
- More ...