Title of article :
About the use of rank transformation in sensitivity analysis of model output
Author/Authors :
Saltelli، نويسنده , , Andrea and Sobolʹ، نويسنده , , Ilya M، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 1995
Pages :
15
From page :
225
To page :
239
Abstract :
Rank transformations are frequently employed in numerical experiments involving a computational model, especially in the context of sensitivity and uncertainty analyses. Response surface replacement and parameter screening are tasks which may benefit from a rank transformation. Ranks can cope with nonlinear (albeit monotonic) input-output distributions, allowing the use of linear regression techniques. Rank transformed statistics are more robust, and provide a useful solution in the presence of long tailed input and output distributions. known to practitioners, care must be employed when interpreting the results of such analyses, as any conclusion drawn using ranks does not translate easily to the original model. In the present note an heuristic approach is taken, to explore, by way of practical examples, the effect of a rank transformation on the outcome of a sensitivity analysis. An attempt is made to identify trends, and to correlate these effects to a model taxonomy. ing sensitivity indices, whereby the total variance of the model output is decomposed into a sum of terms of increasing dimensionality, we show that the main effect of the rank transformation is to increase the relative weight of the first order terms (the ‘main effects’), at the expense of the ‘interactions’ and ‘higher order interactions’. esult the influence of those parameters which influence the output mostly by way of interactions may be overlooked in an analysis based on the ranks. This difficulty increases with the dimensionality of the problem, and may lead to the failure of a rank based sensitivity analysis. gest that the models can be ranked, with respect to the complexity of their input-output relationship, by mean of an ‘Association’ index Iy. Iy may complement the usual model coefficient of determination Ry2 as a measure of model complexity for the purpose of uncertainty and sensitivity analysis.
Journal title :
Reliability Engineering and System Safety
Serial Year :
1995
Journal title :
Reliability Engineering and System Safety
Record number :
1570163
Link To Document :
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