Deep Reinforcement Learning for Automated Stock Trading: An Ensemble Strategy

9 Pages Posted: 3 Nov 2020

See all articles by Hongyang Yang

Hongyang Yang

AI4Finance Foundation

Xiao-Yang Liu

Columbia University - Fu Foundation School of Engineering and Applied Science

Shan Zhong

Columbia University - Fu Foundation School of Engineering and Applied Science

Anwar Walid

Nokia Bell Labs

Date Written: September 11, 2020

Abstract

Stock trading strategies play a critical role in investment. However, it is challenging to design a profitable strategy in a complex and dynamic stock market. In this paper, we propose an ensemble strategy that employs deep reinforcement schemes to learn a stock trading strategy by maximizing investment return. We train a deep reinforcement learning agent and obtain an ensemble trading strategy using three actor-critic based algorithms: Proximal Policy Optimization (PPO), Advantage Actor Critic (A2C), and Deep Deterministic Policy Gradient (DDPG). The ensemble strategy inherits and integrates the best features of the three algorithms, thereby robustly adjusting to different market situations. In order to avoid the large memory consumption in training networks with continuous action space, we employ a load-on-demand technique for processing very large data. We test our algorithms on the 30 Dow Jones stocks that have adequate liquidity. The performance of the trading agent with different reinforcement learning algorithms is evaluated and compared with both the Dow Jones Industrial Average index and the traditional min-variance portfolio allocation strategy. The proposed deep ensemble strategy is shown to outperform the three individual algorithms and two baselines in terms of the risk-adjusted return measured by the Sharpe ratio.

Keywords: Deep Reinforcement Learning, Markov Decision Process, Automated Stock Trading, Ensemble Strategy, Actor-Critic Framework

Suggested Citation

Yang, Hongyang and Liu, Xiao-Yang and Zhong, Shan and Walid, Anwar, Deep Reinforcement Learning for Automated Stock Trading: An Ensemble Strategy (September 11, 2020). Available at SSRN: https://ssrn.com/abstract=3690996 or http://dx.doi.org/10.2139/ssrn.3690996

Hongyang Yang (Contact Author)

AI4Finance Foundation ( email )

New York
New York, NY 10027
United States

Xiao-Yang Liu

Columbia University - Fu Foundation School of Engineering and Applied Science ( email )

New York, NY
United States

Shan Zhong

Columbia University - Fu Foundation School of Engineering and Applied Science ( email )

New York, NY
United States

Anwar Walid

Nokia Bell Labs ( email )

21 J J Thomson Avenue
Cambridge, CB3 0FA
United Kingdom

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