Optimal dividend payout with path-dependent drawdown constraint

Chonghu Guan, Jiacheng Fan, Zuo Quan Xu
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Abstract

This paper studies an optimal dividend payout problem with drawdown constraint in a Brownian motion model, where the dividend payout rate must be no less than a fixed proportion of its historical running maximum. It is a stochastic control problem, where the admissible control depends on its past values, thus is path-dependent. The related Hamilton-Jacobi-Bellman equation turns out to be a new type of two-dimensional variational inequality with gradient constraint, which has only been studied by viscosity solution technique in the literature. In this paper, we use delicate PDE methods to obtain a strong solution. Different from the viscosity solution, based on our solution, we succeed in deriving an optimal feedback payout strategy, which is expressed in terms of two free boundaries and the running maximum surplus process. Furthermore, we have obtained many properties of the value function and the free boundaries such as the boundedness, continuity etc. Numerical examples are presented as well to verify our theoretical results and give some new but not proved financial insights.
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具有路径依赖递减约束的最优股利支付
本文研究了布朗运动模型中具有收缩约束的最优股利支付问题,其中股利支付率必须不小于其历史运行最大值的固定比例。这是一个随机控制问题,其中允许的控制取决于它的过去值,因此是路径依赖的。相关的Hamilton-Jacobi-Bellman方程是一类新的二维梯度约束变分不等式,文献中仅用黏性解技术研究过。在本文中,我们使用精细的PDE方法来获得一个强解。与黏度解不同的是,基于我们的解,我们成功地推导出了一个最优反馈支付策略,该策略用两个自由边界和运行的最大剩余过程来表示。此外,我们还得到了值函数和自由边界的许多性质,如有界性、连续性等。数值例子也提出了验证我们的理论结果,并给出了一些新的,但没有证明的金融见解。
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