Let(Ω , E, P) be a probability space, F a sub-σ-algebra of E, L^p(E)(1 p +∞) the classical function space and LF^p(E) the L^0(F)-module generated by L^p(E), which can be made into a random normed modul...Let(Ω , E, P) be a probability space, F a sub-σ-algebra of E, L^p(E)(1 p +∞) the classical function space and LF^p(E) the L^0(F)-module generated by L^p(E), which can be made into a random normed module in a natural way. Up to the present time, there are three kinds of conditional risk measures, whose model spaces are L^∞(E), L^p(E)(1 p +∞) and LF^p(E)(1 p +∞) respectively, and a conditional convex dual representation theorem has been established for each kind. The purpose of this paper is to study the relations among the three kinds of conditional risk measures together with their representation theorems. We first establish the relation between L^p(E) and LF^p(E), namely LF^p(E) = Hcc(L^p(E)), which shows that LF^p(E)is exactly the countable concatenation hull of L^p(E). Based on the precise relation, we then prove that every L^0(F)-convex L^p(E)-conditional risk measure(1 p +∞) can be uniquely extended to an L^0(F)-convex LF^p(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 L^p-conditional risk measures can be incorporated into that of LF^p(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.展开更多
基金supported by National Natural Science Foundation of China(Grant Nos.11171015 and 11301568)
文摘Let(Ω , E, P) be a probability space, F a sub-σ-algebra of E, L^p(E)(1 p +∞) the classical function space and LF^p(E) the L^0(F)-module generated by L^p(E), which can be made into a random normed module in a natural way. Up to the present time, there are three kinds of conditional risk measures, whose model spaces are L^∞(E), L^p(E)(1 p +∞) and LF^p(E)(1 p +∞) respectively, and a conditional convex dual representation theorem has been established for each kind. The purpose of this paper is to study the relations among the three kinds of conditional risk measures together with their representation theorems. We first establish the relation between L^p(E) and LF^p(E), namely LF^p(E) = Hcc(L^p(E)), which shows that LF^p(E)is exactly the countable concatenation hull of L^p(E). Based on the precise relation, we then prove that every L^0(F)-convex L^p(E)-conditional risk measure(1 p +∞) can be uniquely extended to an L^0(F)-convex LF^p(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 L^p-conditional risk measures can be incorporated into that of LF^p(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.