Fine Properties of the Optimal Skorokhod Embedding Problem
We study the problem of stopping a Brownian motion at a given distribution $\nu$ while optimizing a reward function that depends on the (possibly randomized) stopping time and the Brownian motion. Our first result establishes that the set $\mathcal{T}(\nu)$ of stopping times embedding $\nu$ is weakl...
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Zusammenfassung: | We study the problem of stopping a Brownian motion at a given distribution
$\nu$ while optimizing a reward function that depends on the (possibly
randomized) stopping time and the Brownian motion. Our first result establishes
that the set $\mathcal{T}(\nu)$ of stopping times embedding $\nu$ is weakly
dense in the set $\mathcal{R}(\nu)$ of randomized embeddings. In particular,
the optimal Skorokhod embedding problem over $\mathcal{T}(\nu)$ has the same
value as the relaxed one over $\mathcal{R}(\nu)$ when the reward function is
semicontinuous, which parallels a fundamental result about Monge maps and
Kantorovich couplings in optimal transport. A second part studies the dual
optimization in the sense of linear programming. While existence of a dual
solution failed in previous formulations, we introduce a relaxation of the dual
problem that exploits a novel compactness property and yields existence of
solutions as well as absence of a duality gap, even for irregular reward
functions. This leads to a monotonicity principle which complements the key
theorem of Beiglb\"ock, Cox and Huesmann [Optimal transport and Skorokhod
embedding, Invent. Math., 208:327-400, 2017]. We show that these results can be
applied to characterize the geometry of optimal embeddings through a
variational condition. |
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DOI: | 10.48550/arxiv.1903.03887 |