Conditional risk and acceptability mappings quantify the desirability of random variables (e.g. financial returns) by accounting for available information. In this paper the focus lies on acceptability mappings, concave translation-equivariant monotone mappings L p (Ω, F ,ℙ) → L p ´ (Ω, F´ ,ℙ) with 1 ≤ p ´ ≤ p ≤ ∞, where the σ -algebras F ´ ⊂ F describe the available information. Based on the order completeness of L p (Ω, F ,ℙ)-spaces, we analyze superdifferentials and concave conjugates of conditional acceptability mappings. The related results are used to show properties of two important classes of multi-period valuation functionals: SEC-functionals and additive acceptability compositions. In particular, we derive a chain rule for superdifferentials and use it for characterizing the conjugates of additive acceptability compositions and SEC-functionals.
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Requires Authentication UnlicensedConditional risk and acceptability mappings as Banach-lattice valued mappingsLicensedMarch 12, 2012
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Requires Authentication UnlicensedPCA-kernel estimationLicensedMarch 12, 2012
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Requires Authentication UnlicensedSome multivariate risk indicators: Minimization by using a Kiefer–Wolfowitz approach to the mirror stochastic algorithmLicensedMarch 12, 2012
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Requires Authentication UnlicensedOrdering of multivariate risk models with respect to extreme portfolio lossesLicensedMarch 12, 2012