The Neyman-Pearson lemma for convex expectations
Abstract: We study the Neyman-Pearson theory for convex expectations (convex risk measures) on $L{\infty}(\mu)$. Without assuming that the level sets of penalty functions are weakly compact, a new approach different from the convex duality method is proposed to find a representative pair $(Q{\ast },P{\ast})$ such that the optimal tests are just the classical Neyman-Pearson tests between the representative probabilities $Q{\ast}$ and $P{\ast}$. The key observation is that the feasible test set is compact in the weak${\ast}$ topology by a generalized result of Banach-Alaoglu theorem. Then the minimax theorem can be applied and the representative probability $Q{\ast}$ is found first. Secondly, under the probability $Q{\ast}$, we find the representative probability measure $P{\ast}$ by solving a dual problem. Finally, we apply our results to a shortfall risk minimizing problem in an incomplete financial market.
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