| Literature DB >> 26552862 |
Andreas Tsanakas1, Pietro Millossovich1.
Abstract
In a quantitative model with uncertain inputs, the uncertainty of the output can be summarized by a risk measure. We propose a sensitivity analysis method based on derivatives of the output risk measure, in the direction of model inputs. This produces a global sensitivity measure, explicitly linking sensitivity and uncertainty analyses. We focus on the case of distortion risk measures, defined as weighted averages of output percentiles, and prove a representation of the sensitivity measure that can be evaluated on a Monte Carlo sample, as a weighted average of gradients over the input space. When the analytical model is unknown or hard to work with, nonparametric techniques are used for gradient estimation. This process is demonstrated through the example of a nonlinear insurance loss model. Furthermore, the proposed framework is extended in order to measure sensitivity to constant model parameters, uncertain statistical parameters, and random factors driving dependence between model inputs.Keywords: Aggregation; dependence; parameter uncertainty; risk measures; sensitivity analysis; uncertainty analysis
Year: 2015 PMID: 26552862 DOI: 10.1111/risa.12434
Source DB: PubMed Journal: Risk Anal ISSN: 0272-4332 Impact factor: 4.000