Title of article
Uncertainty-based sensitivity indices for imprecise probability distributions
Author/Authors
Hall، نويسنده , , Jim W.، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2006
Pages
9
From page
1443
To page
1451
Abstract
An uncertainty-based sensitivity index represents the contribution that uncertainty in model input X i makes to the uncertainty in model output Y. This paper addresses the situation where the uncertainties in the model inputs are expressed as closed convex sets of probability measures, a situation that exists when inputs are expressed as intervals or sets of intervals with no particular distribution specified over the intervals, or as probability distributions with interval-valued parameters. Three different approaches to measuring uncertainty, and hence uncertainty-based sensitivity, are explored. Variance-based sensitivity analysis (VBSA) estimates the contribution that each uncertain input, acting individually or in combination, makes to variance in the model output. The partial expected value of perfect information (partial EVPI), quantifies the (financial) value of learning the true numeric value of an input. For both of these sensitivity indices the generalization to closed convex sets of probability measures yields lower and upper sensitivity indices. Finally, the use of relative entropy as an uncertainty-based sensitivity index is introduced and extended to the imprecise setting, drawing upon recent work on entropy measures for imprecise information.
Keywords
Coherent lower and upper probabilities , Variance-based sensitivity indices , Partial expected value of perfect information , Entropy-based sensitivity indices , Generalized information theory
Journal title
Reliability Engineering and System Safety
Serial Year
2006
Journal title
Reliability Engineering and System Safety
Record number
1569212
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