Augmented Quantization: Mixture Models for Risk-Oriented Sensitivity Analysis
Charlie Sire, Didier Rulli\`ere, Rodolphe Le Riche, J\'er\'emy Rohmer, Yann Richet, Lucie Pheulpin

TL;DR
This paper introduces Augmented Quantization, a novel mixture modeling approach using the p-Wasserstein distance to identify influential factors in risk scenarios, demonstrated through toy problems and a flooding case study.
Contribution
It proposes a new quantization method based on the p-Wasserstein distance for mixture models involving Dirac and uniform components, enhancing sensitivity analysis capabilities.
Findings
Effective in identifying influential variables in risk scenarios
Capable of capturing joint effects of multiple variables
Successfully applied to flooding risk analysis
Abstract
A central question in risk analysis is to identify the factors that drive the system toward a specific hazardous outcome, such as the exceedance of a given threshold. When relying on numerical simulators, we propose to study the distribution of the inputs, transformed into uniform variables via their cumulative distributions, conditionally on the occurrence of the hazardous event. To represent this multivariate conditional distribution for sensitivity analysis, we introduce an original quantization approach based on estimating a mixture of Dirac and local uniform distributions. For each marginal of this mixture, a Dirac component indicates a strong influence of the corresponding variable, whereas a uniform component with wide support reflects weak influence. A notable advantage of this method is its ability to identify the regions of the input space that most strongly influence the…
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