Stock trading strategy plays a crucial role in investment companies. However, it is challenging to obtain optimal strategy in the complex and dynamic stock market. We explore the potential of deep reinforcement learning to optimize stock trading strategy and thus maximize investment return. 30 stocks are selected as our trading stocks and their daily prices are used as the training and trading market environment. We train a deep reinforcement learning agent and obtain an adaptive trading strategy. The agent's performance is evaluated and compared with Dow Jones Industrial Average and the traditional min-variance portfolio allocation strategy. The proposed deep reinforcement learning approach is shown to outperform the two baselines in terms of both the Sharpe ratio and cumulative returns.
翻译:股票贸易战略在投资公司中发挥着关键作用。然而,在复杂和动态的股票市场中取得最佳战略是具有挑战性的。我们探讨深层强化学习的潜力,以优化股票贸易战略,从而最大限度地实现投资回报。我们选择30个股票作为我们的贸易存量,以其日常价格作为培训和交易市场环境。我们培训一个深层强化学习代理,并获得适应性贸易战略。对代理人的业绩进行评价,并与道琼斯工业平均指数和传统的微调组合分配战略进行比较。拟议的深层强化学习方法在夏普率和累积回报率两方面都超过了两个基线。