A general framework for probabilistic sensitivity analysis with respect to distribution parameters

10/03/2022
by   Jiannan Yang, et al.
0

Probabilistic sensitivity analysis identifies the influential uncertain input to guide decision-makings. We propose a general sensitivity framework with respect to input distribution parameters that unifies a wide range of sensitivity measures, including information theoretical metrics such as the Fisher information. The framework is derived analytically via a constrained maximization and the sensitivity analysis is reformulated into an eigenvalue problem. There are only two main steps to implement the sensitivity framework utilising the likelihood ratio/score function method, a Monte Carlo type sampling followed by solving an eigenvalue equation. The resulted eigenvectors then provide the directions for simultaneous variations of the input parameters and guide the focus to perturb uncertainty the most. Not only is it conceptually simple, numerical examples demonstrate that the proposed framework also provides new sensitivity insights, such as the combined sensitivity of multiple correlated uncertainty metrics, robust sensitivity analysis with a entropic constraint and approximation of deterministic sensitivities.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset