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arxiv: 1902.04630 · v3 · pith:YD4HRUCPnew · submitted 2019-02-12 · 📊 stat.CO

Derivative-based global sensitivity analysis for models with high-dimensional inputs and functional outputs

classification 📊 stat.CO
keywords derivative-basedanalysisframeworkfunctionalglobalhigh-dimensionalmodelsoutputs
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We present a framework for derivative-based global sensitivity analysis (GSA) for models with high-dimensional input parameters and functional outputs. We combine ideas from derivative-based GSA, random field representation via Karhunen--Lo\`{e}ve expansions, and adjoint-based gradient computation to provide a scalable computational framework for computing the proposed derivative-based GSA measures. We illustrate the strategy for a nonlinear ODE model of cholera epidemics and for elliptic PDEs with application examples from geosciences and biotransport.

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