By using the fact that the space of all probability measures with finite
support can be somehow completed in two different fashions, one generating the
Arens-Eells space and another generating the Kantorovich-Wasserstein
(Wasserstein-1) space, and by exploiting the duality relationship between the
Arens-Eells space with the space of Lipschitz functions, we provide a dual
representation of Fenchel-Moreau-Rockafellar type for proper convex functionals
on Wasserstein-1. We retrieve dual transportation inequalities as a Corollary
and we provide examples where the theorem can be used to easily prove dual
expressions like the celebrated Donsker-Varadhan variational formula. Finally
our result allows to write convex functions as the supremum over all linear
functions that are generated by roots of its conjugate dual, something that we
apply to the field of Partially observable Markov decision processes (POMDPs)
to approximate the value function of a given POMDP by iterating level sets.
This extends the method used in Smallwood 1973 for finite state spaces to the
case were the state space is a Polish metric space.Comment: 20 page