Overcoming global sensitivity limitations: using active subspaces to explore discrepancies between global and local parameter sensitivities
Huiyan Zou, Allison L. Lewis

TL;DR
This paper addresses the limitations of global sensitivity metrics by proposing a framework using active subspaces to evaluate the stability of parameter sensitivities across different regions of the parameter space, improving robustness in complex models.
Contribution
It introduces a novel framework leveraging active subspaces to assess the reliability of global sensitivity metrics locally, enhancing parameter importance analysis in high-dimensional models.
Findings
Discrepancies between global and local sensitivities can lead to misleading conclusions.
The proposed framework identifies subregions where global sensitivity metrics are trustworthy.
Application to the Lotka-Volterra model demonstrates increased robustness in sensitivity analysis.
Abstract
Global sensitivity metrics are essential tools for assessing parameter importance in complex models, particularly when precise information about parameter values is unavailable. In many cases, such metrics are used to provide parameter rankings that allow for necessary dimension reduction in moderate-to-high dimensional systems. However, globally-derived sensitivity results may obscure localized variability in parameter sensitivities, resulting in misleading conclusions about parameter importance and ensuing consequences for subsequent tasks such as model calibration and surrogate model construction. In this study, we illustrate how discrepancies between globally- and locally-based sensitivity information may arise for an emerging sensitivity metric based on active subspace methodology, as well as for other commonly used sensitivity techniques. In response, we outline a framework that…
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Taxonomy
TopicsModel Reduction and Neural Networks · Probabilistic and Robust Engineering Design · Protein Structure and Dynamics
