Deep Reinforcement Learning for Optimum Order Execution: Mitigating Risk and Maximizing Returns
By: Khabbab Zakaria , Jayapaulraj Jerinsh , Andreas Maier and more
Potential Business Impact:
Smarter trading makes money grow faster.
Optimal Order Execution is a well-established problem in finance that pertains to the flawless execution of a trade (buy or sell) for a given volume within a specified time frame. This problem revolves around optimizing returns while minimizing risk, yet recent research predominantly focuses on addressing one aspect of this challenge. In this paper, we introduce an innovative approach to Optimal Order Execution within the US market, leveraging Deep Reinforcement Learning (DRL) to effectively address this optimization problem holistically. Our study assesses the performance of our model in comparison to two widely employed execution strategies: Volume Weighted Average Price (VWAP) and Time Weighted Average Price (TWAP). Our experimental findings clearly demonstrate that our DRL-based approach outperforms both VWAP and TWAP in terms of return on investment and risk management. The model's ability to adapt dynamically to market conditions, even during periods of market stress, underscores its promise as a robust solution.
Similar Papers
Reinforcement Learning in Queue-Reactive Models: Application to Optimal Execution
Trading & Market Microstructure
Teaches computers to trade stocks smartly.
Reinforcement Learning for Trade Execution with Market Impact
Trading & Market Microstructure
Helps traders make more money buying and selling.
Right Place, Right Time: Market Simulation-based RL for Execution Optimisation
Computational Finance
Teaches computers to trade stocks smartly.