Multi-Agent Reinforcement Learning in a Realistic Limit Order Book Market Simulation
Micha\"el Karpe, Jin Fang, Zhongyao Ma, Chen Wang

TL;DR
This paper introduces a multi-agent reinforcement learning approach for optimal order execution in a realistic market simulation environment, demonstrating convergence to strategies like TWAP and validating results against real market data.
Contribution
It presents a novel multi-agent RL framework for order execution in a realistic market simulation, integrating high-frequency trading signals and validating with real market data.
Findings
RL agent converges to TWAP strategy in some scenarios
The simulation environment accurately models market microstructure
RL approach outperforms baseline strategies in certain conditions
Abstract
Optimal order execution is widely studied by industry practitioners and academic researchers because it determines the profitability of investment decisions and high-level trading strategies, particularly those involving large volumes of orders. However, complex and unknown market dynamics pose significant challenges for the development and validation of optimal execution strategies. In this paper, we propose a model-free approach by training Reinforcement Learning (RL) agents in a realistic market simulation environment with multiple agents. First, we configure a multi-agent historical order book simulation environment for execution tasks built on an Agent-Based Interactive Discrete Event Simulation (ABIDES) [arXiv:1904.12066]. Second, we formulate the problem of optimal execution in an RL setting where an intelligent agent can make order execution and placement decisions based on…
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Taxonomy
TopicsComplex Systems and Time Series Analysis · Auction Theory and Applications · Stock Market Forecasting Methods
MethodsQ-Learning
