On optimal tracking portfolio in incomplete markets: The classical control and the reinforcement learning approaches

Lijun Bo, Yijie Huang, Xiang Yu
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Abstract

This paper studies an infinite horizon optimal tracking portfolio problem using capital injection in incomplete market models. We consider the benchmark process modelled by a geometric Brownian motion with zero drift driven by some unhedgeable risk. The relaxed tracking formulation is adopted where the portfolio value compensated by the injected capital needs to outperform the benchmark process at any time, and the goal is to minimize the cost of the discounted total capital injection. In the first part, we solve the stochastic control problem when the market model is known, for which the equivalent auxiliary control problem with reflections and the associated HJB equation with a Neumann boundary condition are studied. In the second part, the market model is assumed to be unknown, for which we consider the exploratory formulation of the control problem with entropy regularizer and develop the continuous-time q-learning algorithm for the stochastic control problem with state reflections. In an illustrative example, we show the satisfactory performance of the q-learning algorithm.
不完全市场中最优跟踪投资组合:经典控制与强化学习方法
研究了不完全市场模型中考虑注资的无限视界最优跟踪投资组合问题。我们考虑一个几何布朗运动模型的基准过程与零漂移由一些不可对冲的风险驱动。采用松弛跟踪公式,注入资金补偿的投资组合价值在任何时候都需要优于基准过程,目标是使贴现总注入资金的成本最小化。在第一部分中,我们解决了市场模型已知时的随机控制问题,研究了带有反射的等效辅助控制问题和带有Neumann边界条件的HJB方程。在第二部分中,假设市场模型是未知的,为此我们考虑了带有熵正则化器的控制问题的探索性表述,并开发了带有状态反射的随机控制问题的连续时间学习算法。在一个说明性的例子中,我们展示了q-学习算法令人满意的性能。
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