Back to Search Start Over

Towards Generalizable Reinforcement Learning for Trade Execution

Authors :
Zhang, Chuheng
Duan, Yitong
Chen, Xiaoyu
Chen, Jianyu
Li, Jian
Zhao, Li
Publication Year :
2023

Abstract

Optimized trade execution is to sell (or buy) a given amount of assets in a given time with the lowest possible trading cost. Recently, reinforcement learning (RL) has been applied to optimized trade execution to learn smarter policies from market data. However, we find that many existing RL methods exhibit considerable overfitting which prevents them from real deployment. In this paper, we provide an extensive study on the overfitting problem in optimized trade execution. First, we model the optimized trade execution as offline RL with dynamic context (ORDC), where the context represents market variables that cannot be influenced by the trading policy and are collected in an offline manner. Under this framework, we derive the generalization bound and find that the overfitting issue is caused by large context space and limited context samples in the offline setting. Accordingly, we propose to learn compact representations for context to address the overfitting problem, either by leveraging prior knowledge or in an end-to-end manner. To evaluate our algorithms, we also implement a carefully designed simulator based on historical limit order book (LOB) data to provide a high-fidelity benchmark for different algorithms. Our experiments on the high-fidelity simulator demonstrate that our algorithms can effectively alleviate overfitting and achieve better performance.<br />Comment: Accepted by IJCAI-23

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2307.11685
Document Type :
Working Paper