Title of article
Probabilistic sensitivity analysis of complex models: a Bayesian approach
Author/Authors
OHagan، Anthony نويسنده , , Oakley، Jeremy E. نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2004
Pages
-750
From page
751
To page
0
Abstract
In many areas of science and technology, mathematical models are built to simulate complex real world phenomena. Such models are typically implemented in large computer programs and are also very complex, such that the way that the model responds to changes in its inputs is not transparent. Sensitivity analysis is concerned with understanding how changes in the model inputs influence the outputs. This may be motivated simply by a wish to understand the implications of a complex model but often arises because there is uncertainty about the true values of the inputs that should be used for a particular application. A broad range of measures have been advocated in the literature to quantify and describe the sensitivity of a modelʹs output to variation in its inputs. In practice the most commonly used measures are those that are based on formulating uncertainty in the model inputs by a joint probability distribution and then analysing the induced uncertainty in outputs, an approach which is known as probabilistic sensitivity analysis. We present a Bayesian framework which unifies the various tools of prob- abilistic sensitivity analysis. The Bayesian approach is computationally highly efficient. It allows effective sensitivity analysis to be achieved by using far smaller numbers of model runs than standard Monte Carlo methods. Furthermore, all measures of interest may be computed from a single set of runs.
Keywords
salmonids , starvation , re-feeding , muscle structure , connective tissue , Texture , collagen
Journal title
Journal of Royal Statistical Society (Series B)
Serial Year
2004
Journal title
Journal of Royal Statistical Society (Series B)
Record number
85045
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