论文标题
均值投资组合中的最佳清算
Optimal Liquidation in a Mean-reverting Portfolio
论文作者
论文摘要
在这项工作中,我们使用市场订单研究了有限的地平线最佳清算问题,并在算法交易中具有乘法价格影响。当代理商在具有两个金融资产的市场交易时,我们分析了该案例,其日志优点的差异是通过均值进行过程建模的。代理商的任务是清算两个金融资产之一的股份初始头寸,而无需交易另一股股票。要优化的标准包括在运行库存罚款中最大化代理商的预期最终值。本文的主要结果是找到与此问题相关的汉密尔顿 - 雅各比 - 贝尔曼(HJB)方程的经典解决方案,事实证明这与价值函数不一致。但是,我们发现值函数是与问题相关的前向后随机微分方程(FBSDE)的解决方案。我们提供数值测试,表明HJB和FBSDE解决方案彼此接近并分析所述模型的性能。我们还证明了对HJB方程的粘度解决方案的验证定理和比较原理。
In this work we study a finite horizon optimal liquidation problem with multiplicative price impact in algorithmic trading, using market orders. We analyze the case when an agent is trading on a market with two financial assets, whose difference of log-prices is modelled with a mean-reverting process. The agent's task is to liquidate an initial position of shares of one of the two financial assets, without having the possibility of trading the other stock. The criterion to be optimized consists in maximising the expected final value of the agent, with a running inventory penalty. The main result of this paper consists in finding a classical solution of the Hamilton-Jacobi-Bellman (HJB) equation associated to this problem, which is proved to not coincide with the value function. However, we find the value function as a solution to the forward-backward stochastic differential equation (FBSDE) associated to the problem. We provide numerical tests showing that the HJB and FBSDE solutions are close to each other and analysing performance of the described model. We also prove a verification theorem and a comparison principle for the viscosity solution to the HJB equation.