Sensitivity analysis for multidimensional and functional outputs

Abstract
Let be random objects (the inputs), defined on some probability space and valued in some measurable space . Further, let be the output. Here, is a measurable function from to some Hilbert space ( could be either of finite or infinite dimension). In this work, we give a natural generalization of the Sobol indices (that are classically defined when ), when the output belongs to . These indices have very nice properties. First, they are invariant. under isometry and scaling. Further they can be, as in dimension , easily estimated by using the so-called Pick and Freeze method. We investigate the asymptotic behaviour of such estimation scheme.
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