Integrating Large Language Models and Reinforcement Learning for Sentiment-Driven Quantitative Trading

Long, Wo, Zeng, Wenxin, Zhang, Xiaoyu, Zhou, Ziyao

arXiv.org Artificial Intelligence 

The increasing availability of unstructured data has opened new frontiers in quantitative finance. In particular, the integration of sentiment analysis into trading strategies has gained great interest. In contrast to traditional technical indicators, which capture patterns in historical price and volume data, sentiment signals extracted from news articles and other media offer a complementary, forward-looking perspective rooted in investor expectations and market narratives. However, effectively combining these two distinct sources of information, one backward-looking and one anticipatory, remains a significant challenge in systematic investing. This paper explores an innovative approach to integrating sentiment information with traditional technical indicators in equity market trading.

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