Dynamic robust duality in utility maximization
Bernt {\O}ksendal, Agn\`es Sulem

TL;DR
This paper extends classical utility maximization duality to a dynamic setting in Itô-Lévy markets using stochastic control, and introduces robust versions accounting for model uncertainty, with explicit relations and examples.
Contribution
It develops a dynamic duality relation in utility maximization for Itô-Lévy markets and introduces robust formulations incorporating model uncertainty.
Findings
Dynamic duality relation holds for all times in Itô-Lévy markets.
Optimal adjoint process equals the optimal density process.
Existence of an optimal scenario relates to claim replicability.
Abstract
A celebrated financial application of convex duality theory gives an explicit relation between the following two quantities: (i) The optimal terminal wealth of the problem to maximize the expected -utility of the terminal wealth generated by admissible portfolios in a market with the risky asset price process modeled as a semimartingale; (ii) The optimal scenario of the dual problem to minimize the expected -value of over a family of equivalent local martingale measures , where is the convex conjugate function of the concave function . In this paper we consider markets modeled by It\^o-L\'evy processes. In the first part we use the maximum principle in stochastic control theory to extend the above relation to a \emph{dynamic} relation, valid for all $t \in…
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Taxonomy
TopicsStochastic processes and financial applications · Risk and Portfolio Optimization · Advanced Bandit Algorithms Research
