We consider the problem where a modeller conducts sensitivity analysis of a model consisting of random input factors, a corresponding random output of interest, and a baseline probability measure. The modeller seeks to understand how the model (the distribution of the input factors as well as the output) changes under a stress on the output's distribution. Specifically, for a stress on the output random variable, we derive the unique stressed distribution of the output that is closest in the Wasserstein distance to the baseline output's distribution and satisfies the stress. We further derive the stressed model, including the stressed distribution of the inputs, which can be calculated in a numerically efficient way from a set of baseline M...
Quantitative models support investigators in several risk analysis applications. The calculation of ...
The SWIM package implements a flexible sensitivity analysis framework, based primarily on results an...
AbstractQuantitative models support investigators in several risk analysis applications. The calcula...
We consider the problem where a modeller conducts sensitivity analysis of a model consisting of rand...
3siSensitivity analysis is an important component of model building, interpretation and validation. ...
In a quantitative model with uncertain inputs, the uncertainty of the output can be summarized by a ...
In a quantitative model with uncertain inputs, the uncertainty of the output can be summarized by a ...
3In risk analysis, sensitivity measures quantify the extent to which the probability distribution of...
We introduce an approach to sensitivity analysis of quantitative risk models, for the purpose of ide...
This thesis is a collection of three contributions to sensitivity analysis of financial and insuranc...
Sensitivity analysis of a numerical model, for instance simulating physical phenomena, is useful to ...
Stress testing, and in particular, reverse stress testing, is a prominent exercise in risk managemen...
Reverse stress testing is a way of finding a combination of market risk factors, called a scenario, ...
The experience from the global financial crisis has raised serious concerns about the accuracy of st...
(Re) insurance has long used different typologies of models to assess risks for, for example, pricin...
Quantitative models support investigators in several risk analysis applications. The calculation of ...
The SWIM package implements a flexible sensitivity analysis framework, based primarily on results an...
AbstractQuantitative models support investigators in several risk analysis applications. The calcula...
We consider the problem where a modeller conducts sensitivity analysis of a model consisting of rand...
3siSensitivity analysis is an important component of model building, interpretation and validation. ...
In a quantitative model with uncertain inputs, the uncertainty of the output can be summarized by a ...
In a quantitative model with uncertain inputs, the uncertainty of the output can be summarized by a ...
3In risk analysis, sensitivity measures quantify the extent to which the probability distribution of...
We introduce an approach to sensitivity analysis of quantitative risk models, for the purpose of ide...
This thesis is a collection of three contributions to sensitivity analysis of financial and insuranc...
Sensitivity analysis of a numerical model, for instance simulating physical phenomena, is useful to ...
Stress testing, and in particular, reverse stress testing, is a prominent exercise in risk managemen...
Reverse stress testing is a way of finding a combination of market risk factors, called a scenario, ...
The experience from the global financial crisis has raised serious concerns about the accuracy of st...
(Re) insurance has long used different typologies of models to assess risks for, for example, pricin...
Quantitative models support investigators in several risk analysis applications. The calculation of ...
The SWIM package implements a flexible sensitivity analysis framework, based primarily on results an...
AbstractQuantitative models support investigators in several risk analysis applications. The calcula...