P-Sensitive Functions and Localizations
Abstract
This paper assumes a robust stochastic model where a set P of probability measures replaces the single probability measure of dominated models. We introduce and study P-sensitive functions defined on robust function spaces of random variables. We show that P-sensitive functions are precisely those that admit a representation via so-called functional localization. The theory is applied to solving robust optimization problems, to convex risk measures, and to the study of no arbitrage in robust one-period financial models.
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