Learning the Market: Sentiment-Based Ensemble Trading Agents

Andrew Ye, James Xu, Yi Wang, Yifan Yu, Daniel Yan, Ryan Chen, Bosheng Dong, Vipin Chaudhary, Shuai Xu
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Abstract

We propose the integration of sentiment analysis and deep-reinforcement learning ensemble algorithms for stock trading, and design a strategy capable of dynamically altering its employed agent given concurrent market sentiment. In particular, we create a simple-yet-effective method for extracting news sentiment and combine this with general improvements upon existing works, resulting in automated trading agents that effectively consider both qualitative market factors and quantitative stock data. We show that our approach results in a strategy that is profitable, robust, and risk-minimal -- outperforming the traditional ensemble strategy as well as single agent algorithms and market metrics. Our findings determine that the conventional practice of switching ensemble agents every fixed-number of months is sub-optimal, and that a dynamic sentiment-based framework greatly unlocks additional performance within these agents. Furthermore, as we have designed our algorithm with simplicity and efficiency in mind, we hypothesize that the transition of our method from historical evaluation towards real-time trading with live data should be relatively simple.
学习市场:基于情绪的集合交易代理
我们提出将情绪分析和深度强化学习集合算法整合到股票交易中,并设计了一种能够根据当前市场情绪动态改变其所使用的代理的策略。特别是,我们创建了一种简单而有效的方法来提取新闻情绪,并将其与对现有工作的总体改进相结合,从而产生了同时有效考虑定量市场因素和定量股票数据的自动交易代理。我们的研究结果表明,我们的方法产生了一种盈利能力强、稳健且风险最小的策略,其表现优于传统的组合策略以及单一代理算法和市场指标。我们的研究结果表明,传统的每隔固定月数切换组合代理的做法是次优的,而基于情绪的动态框架则大大释放了这些代理的额外性能。此外,由于我们在设计算法时考虑到了简单性和效率,因此我们假设我们的方法从历史评估向实时数据交易的过渡应该相对简单。
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