Combining Transformer based Deep Reinforcement Learning with Black-Litterman Model for Portfolio Optimization
Ruoyu Sun (1), Angelos Stefanidis (2), Zhengyong Jiang (2), Jionglong, Su (2) ((1) Xi'an Jiaotong-Liverpool University, School of Mathematics and, Physics, Department of Financial, Actuarial Mathematics (2) Xi'an, Jiaotong-Liverpool University Entrepreneur College (Taicang)

TL;DR
This paper introduces a hybrid portfolio optimization model that combines deep reinforcement learning with the Black-Litterman model to account for dynamic asset correlations, significantly improving returns and risk-adjusted performance in stock market trading.
Contribution
The paper presents a novel hybrid model integrating DRL with the Black-Litterman approach to learn dynamic correlations and enhance portfolio optimization, especially for long/short strategies.
Findings
DRL agent outperforms comparison strategies by at least 42% in accumulated return.
The hybrid model significantly improves return per unit of risk.
Empirical results on US stock data validate the model's effectiveness.
Abstract
As a model-free algorithm, deep reinforcement learning (DRL) agent learns and makes decisions by interacting with the environment in an unsupervised way. In recent years, DRL algorithms have been widely applied by scholars for portfolio optimization in consecutive trading periods, since the DRL agent can dynamically adapt to market changes and does not rely on the specification of the joint dynamics across the assets. However, typical DRL agents for portfolio optimization cannot learn a policy that is aware of the dynamic correlation between portfolio asset returns. Since the dynamic correlations among portfolio assets are crucial in optimizing the portfolio, the lack of such knowledge makes it difficult for the DRL agent to maximize the return per unit of risk, especially when the target market permits short selling (i.e., the US stock market). In this research, we propose a hybrid…
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Taxonomy
TopicsStock Market Forecasting Methods
MethodsAttentive Walk-Aggregating Graph Neural Network
