On random convex analysis -- the analytic foundation of the module approach to conditional risk measures
Abstract: To provide a solid analytic foundation for the module approach to conditional risk measures, this paper establishes a complete random convex analysis over random locally convex modules by simultaneously considering the two kinds of topologies (namely the $(\varepsilon,\lambda)$--topology and the locally $L0$-- convex topology). Then, we make use of the advantage of the $(\varepsilon,\lambda)$--topology and grasp the local property of $L0$--convex conditional risk measures to prove that every $L{0}$--convex $L{p}$--conditional risk measure ($1\leq p\leq+\infty$) can be uniquely extended to an $L{0}$--convex $L{p}_{\mathcal{F}}(\mathcal{E})$--conditional risk measure and that the dual representation theorem of the former can also be regarded as a special case of that of the latter, which shows that the study of $Lp$--conditional risk measures can be incorporated into that of $L{p}_{\mathcal{F}}(\mathcal{E})$--conditional risk measures. In particular, in the process we find that combining the countable concatenation hull of a set and the local property of conditional risk measures is a very useful analytic skill that may considerably simplify and improve the study of $L{0}$--convex conditional risk measures.
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