Law of Large Numbers for Risk Measures

09/22/2021
by   Freddy Delbaen, et al.
0

Under appropriate integrability conditions the risk measure of the sample measures for a law invariant risk measure converge almost surely to the risk measure of the sampled random variable. The results follow from general convergence theorems based on the theory of Orlicz spaces.

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