Department of Business Administration, Shanghai Lixin University of Accounting and Finance, Shanghai 201209, China.
Comput Intell Neurosci. 2022 Mar 4;2022:1988396. doi: 10.1155/2022/1988396. eCollection 2022.
In the real world, there are a variety of situations that require strategy control, that is reinforcement learning, as a method for studying the decision-making and behavioral strategies of intelligence. It has received a lot of research and empirical evidence on its functions and roles and is also a method recognized by scholars. Among them, combining reinforcement learning with sentiment analysis is an important theoretical research direction, but so far there is still relatively little research work about it, and it still has the problems of poor application effect and low accuracy rate. Therefore, in this study, we use the features related to sentiment analysis and deep reinforcement learning and use various algorithms for optimization to deal with the above problems. In this study, a sentiment analysis method incorporating knowledge graphs is designed using the characteristics of the stock trading market. A deep reinforcement learning investment trading strategy algorithm for sentiment analysis combined with knowledge graphs from this study is used in the subsequent experiments. The deep reinforcement learning system combining sentiment analysis and knowledge graph implemented in this study not only analyzes the algorithm from the theoretical aspect but also simulates data from the stock exchange market for experimental comparison and analysis. The experimental results illustrate that the deep reinforcement learning algorithm combining sentiment analysis and knowledge graphs used in this study can achieve better gains than the existing traditional reinforcement learning algorithms and has better practical application value.
在现实世界中,存在着各种需要策略控制的情况,即强化学习,作为研究智能决策和行为策略的一种方法。它在其功能和作用方面得到了大量的研究和实证证据,也是学者认可的一种方法。其中,将强化学习与情感分析相结合是一个重要的理论研究方向,但到目前为止,关于这方面的研究工作仍然相对较少,仍然存在应用效果差、准确率低等问题。因此,在本研究中,我们使用与情感分析和深度强化学习相关的特征,并使用各种算法进行优化,以解决上述问题。在本研究中,设计了一种结合知识图谱的情感分析方法,利用股票交易市场的特点。从本研究中结合知识图谱的情感分析的深度强化学习投资交易策略算法,用于后续的实验。本研究中实现的结合情感分析和知识图谱的深度强化学习系统不仅从理论方面分析了算法,还从股票交易所市场模拟数据进行了实验比较和分析。实验结果表明,本研究中使用的结合情感分析和知识图谱的深度强化学习算法可以获得比现有传统强化学习算法更好的收益,具有更好的实际应用价值。