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Forward-Backward Stochastic Differential Games and Stochastic Control under Model Uncertainty

机译:模型不确定性下的前向后随机微分博弈和随机控制

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摘要

We study optimal stochastic control problems with jumps under model uncertainty. We rewrite such problems as stochastic differential games of forward- backward stochastic differential equations. We prove general stochastic maximum principles for such games, both in the zero-sum case (finding conditions for saddle points) and for the nonzero sum games (finding conditions for Nash equilibria). We then apply these results to study robust optimal portfolio-consumption problems with penalty.We establish a connection between market viability under model uncertainty and equivalent martingale measures. In the case with entropic penalty, we prove a general reduction theorem, stating that a optimal portfolio-consumption problem under model uncertainty can be reduced to a classical portfolio-consumption problem under model certainty, with a change in the utility function, and we relate this to risk sensitive control. In particular, this result shows that model uncertainty increases the Arrow-Pratt risk aversion index.
机译:我们研究了模型不确定性下具有跳跃的最优随机控制问题。我们将诸如前向后向随机微分方程的随机微分博弈等问题重写。我们证明了这种博弈的一般随机最大原理,无论是零和情况(鞍点的发现条件)还是非零和博弈(纳什均衡的条件)。然后,我们将这些结果用于研究带有惩罚性的鲁棒最优投资组合消费问题。我们在模型不确定性下的市场生存能力与等效mar测度之间建立了联系。在有熵惩罚的情况下,我们证明了一个一般的归约定理,指出随着模型效用的变化,模型不确定性下的最优投资组合消费问题可以简化为模型确定性下的经典投资组合消费问题。这会带来敏感控制的风险。特别是,该结果表明模型不确定性会增加Arrow-Pratt风险规避指数。

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