Reinforcement Learning for Trade Execution with Market Impact
By: Patrick Cheridito, Moritz Weiss
Potential Business Impact:
Helps traders make more money buying and selling.
In this paper, we introduce a novel reinforcement learning framework for optimal trade execution in a limit order book. We formulate the trade execution problem as a dynamic allocation task whose objective is the optimal placement of market and limit orders to maximize expected revenue. By employing multivariate logistic-normal distributions to model random allocations, the framework enables efficient training of the reinforcement learning algorithm. Numerical experiments show that the proposed method outperforms traditional benchmark strategies in simulated limit order book environments featuring noise traders submitting random orders, tactical traders responding to order book imbalances, and a strategic trader seeking to acquire or liquidate an asset position.
Similar Papers
Reinforcement Learning in Queue-Reactive Models: Application to Optimal Execution
Trading & Market Microstructure
Teaches computers to trade stocks smartly.
Reinforcement Learning-Based Market Making as a Stochastic Control on Non-Stationary Limit Order Book Dynamics
Trading & Market Microstructure
Teaches computers to make smart money trades.
Right Place, Right Time: Market Simulation-based RL for Execution Optimisation
Computational Finance
Teaches computers to trade stocks smartly.