The feasibility of making profitable trades on a single asset on stock exchanges based on patterns identification has long attracted researchers. Reinforcement Learning (RL) and Natural Language Processing have gained notoriety in these single-asset trading tasks, but only a few works have explored their combination. Moreover, some issues are still not addressed, such as extracting market sentiment momentum through the explicit capture of sentiment features that reflect the market condition over time and assessing the consistency and stability of RL results in different situations. Filling this gap, we propose the Sentiment-Aware RL (SentARL) intelligent trading system that improves profit stability by leveraging market mood through an adaptive amount of past sentiment features drawn from textual news. We evaluated SentARL across twenty assets, two transaction costs, and five different periods and initializations to show its consistent effectiveness against baselines. Subsequently, this thorough assessment allowed us to identify the boundary between news coverage and market sentiment regarding the correlation of price-time series above which SentARL's effectiveness is outstanding.
翻译:长期以来,在确定模式的基础上对证券交易所的单一资产进行有利可图的交易的可行性吸引了研究人员。强化学习和自然语言处理在这些单一资产交易任务中获得了知名度,但只有少数著作探讨了这些交易的组合。此外,一些问题仍然没有得到解决,例如通过明确捕捉反映长期市场状况的情绪特征来激发市场情绪势头,并评估不同情况下RL结果的一致性和稳定性。填补这一差距,我们提议通过调适从文字新闻中提取的过去情绪特征来利用市场情绪来提高利润稳定性。我们评估了SentARL的20个资产、2个交易费用、5个不同时期和初始化,以表明其相对于基线的一贯效力。随后,这一彻底评估使我们得以确定关于SentARL所上的价格-时间序列相关性的新闻报道和市场情绪之间的界限,SentARL的实效是突出的。