We study the general properties of robust inf-convolution and risk-sharing for convex risk measures under uncertainty in random variables. Our approach has uncertainty on a set of multivariate random variables dependent on the allocation decision. In our main result and contribution, we characterize the acceptance set, penalty term, and necessary and sufficient conditions for optimality. Moreover, we provide concrete examples for uncertainty sets, especially based on closed balls under p-norms and Wasserstein distance. We also expose examples that relate our approach to the alternative where uncertainty is treated in a univariate setting.
机构:
Yuanta Secur Korea, Dept Sales & Trading, Seoul 04538, South Korea
Natl Univ Singapore, Singapore, SingaporeYuanta Secur Korea, Dept Sales & Trading, Seoul 04538, South Korea
Lee, Junbeom
Sturm, Stephan
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Worcester Polytech Inst, Dept Math Sci, Worcester, MA 01609 USAYuanta Secur Korea, Dept Sales & Trading, Seoul 04538, South Korea
Sturm, Stephan
Zhou, Chao
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Natl Univ Singapore, Dept Math, Inst Operat Res & Analyt, Singapore 119076, Singapore
Natl Univ Singapore, Suzhou Res Inst, Singapore 119076, SingaporeYuanta Secur Korea, Dept Sales & Trading, Seoul 04538, South Korea
机构:
Univ Milano Bicocca, Dipartimento Stat & Metodi Quantitat, I-20126 Milan, ItalyUniv Milano Bicocca, Dipartimento Stat & Metodi Quantitat, I-20126 Milan, Italy