Paper ID: 2410.12464

Enhancing LLM Trading Performance with Fact-Subjectivity Aware Reasoning

Qian Wang, Yuchen Gao, Zhenheng Tang, Bingqiao Luo, Bingsheng He

While many studies prove more advanced LLMs perform better on tasks such as math and trading, we notice that in cryptocurrency trading, stronger LLMs work worse than weaker LLMs often. To study how this counter-intuitive phenomenon occurs, we examine the LLM reasoning processes on making trading decisions. We find that separating the reasoning process into factual and subjective components can lead to higher profits. Building on this insight, we introduce a multi-agent framework, FS-ReasoningAgent, which enables LLMs to recognize and learn from both factual and subjective reasoning. Extensive experiments demonstrate that this framework enhances LLM trading performance in cryptocurrency markets. Additionally, an ablation study reveals that relying on subjective news tends to generate higher returns in bull markets, whereas focusing on factual information yields better results in bear markets. Our code and data are available at \url{this https URL}.

Submitted: Oct 16, 2024