This paper assembles a toolkit for the assessment of model risk when model uncertainty sets are defined in terms of an F-divergence ball around a reference model. We propose a new family of F-divergences that are easy to implement and flexible enough to imply convincing uncertainty sets for broad classes of reference models. We use our theoretical results to construct concrete examples of divergences that allow for significant amounts of uncertainty about lognormal or heavy-tailed Weibull reference models without implying that the worst case is necessarily infinitely bad. We implement our tools in an open-source software package and apply them to three risk management problems from operations management, insurance, and finance
We propose a unified theory that links uncertainty sets in robust optimization to risk measures in p...
In this paper, we propose a novel approach to compare the performances of binary classification mode...
The experience from the global financial crisis has raised serious concerns about the accuracy of st...
In the presence of model risk, it is well-established to replace classical expected values by worst-...
We propose to interpret distribution model risk as sensitivity of ex-pected loss to changes in the r...
We derive a generalized notion of f-divergences, called (f,l)-divergences. We show that this general...
We derive a generalized notion of f-divergences, called (f,l)-divergences. We show that this general...
We introduce an approach to sensitivity analysis of quantitative risk models, for the purpose of ide...
University of Technology Sydney. Faculty of Business.The renowned statistician George E. P. Box wrot...
We propose to interpret distribution model risk as sensitivity of expected loss to changes in the ri...
Models can be wrong and recognising their limitations is important in financial and economic decisio...
The experience from the global financial crisis has raised serious concerns about the accuracy of st...
International audienceThe experience from the global financial crisis has raised serious concerns ab...
We propose an approach for estimating f-divergences that exploits a new representa-tion of an f-dive...
Master's thesis in Risk ManagementMany of the recently published articles that try to resolve challe...
We propose a unified theory that links uncertainty sets in robust optimization to risk measures in p...
In this paper, we propose a novel approach to compare the performances of binary classification mode...
The experience from the global financial crisis has raised serious concerns about the accuracy of st...
In the presence of model risk, it is well-established to replace classical expected values by worst-...
We propose to interpret distribution model risk as sensitivity of ex-pected loss to changes in the r...
We derive a generalized notion of f-divergences, called (f,l)-divergences. We show that this general...
We derive a generalized notion of f-divergences, called (f,l)-divergences. We show that this general...
We introduce an approach to sensitivity analysis of quantitative risk models, for the purpose of ide...
University of Technology Sydney. Faculty of Business.The renowned statistician George E. P. Box wrot...
We propose to interpret distribution model risk as sensitivity of expected loss to changes in the ri...
Models can be wrong and recognising their limitations is important in financial and economic decisio...
The experience from the global financial crisis has raised serious concerns about the accuracy of st...
International audienceThe experience from the global financial crisis has raised serious concerns ab...
We propose an approach for estimating f-divergences that exploits a new representa-tion of an f-dive...
Master's thesis in Risk ManagementMany of the recently published articles that try to resolve challe...
We propose a unified theory that links uncertainty sets in robust optimization to risk measures in p...
In this paper, we propose a novel approach to compare the performances of binary classification mode...
The experience from the global financial crisis has raised serious concerns about the accuracy of st...