Recent advances in large language models (LLMs) have enabled multi-agent reasoning systems capable of collaborative decision-making. However, in financial analysis, most frameworks remain narrowly focused on either isolated single-agent predictors or loosely connected analyst ensembles, and they lack a coherent reasoning workflow that unifies diverse data modalities. We introduce P1GPT, a layered multi-agent LLM framework for multi-modal financial information analysis and interpretable trading decision support. Unlike prior systems that emulate trading teams through role simulation, P1GPT implements a structured reasoning pipeline that systematically fuses technical, fundamental, and news-based insights through coordinated agent communication and integration-time synthesis. Backtesting on multi-modal datasets across major U.S. equities demonstrates that P1GPT achieves superior cumulative and risk-adjusted returns, maintains low drawdowns, and provides transparent causal rationales. These findings suggest that structured reasoning workflows, rather than agent role imitation, offer a scalable path toward explainable and trustworthy financial AI systems.
翻译:近期大语言模型(LLMs)的进展催生了能够进行协同决策的多智能体推理系统。然而在金融分析领域,大多数框架仍局限于孤立的单智能体预测器或松散连接的分析师集合,缺乏能够统一多种数据模态的连贯推理工作流。本文提出P1GPT——一种用于多模态金融信息分析与可解释交易决策支持的分层多智能体LLM框架。与先前通过角色模拟模仿交易团队的系统不同,P1GPT实现了结构化推理流水线,通过协调的智能体通信与集成时融合,系统性地整合技术面、基本面及新闻驱动的市场洞察。基于美国主要股票多模态数据集的回测表明,P1GPT实现了更优的累计收益与风险调整后收益,保持较低的回撤幅度,并提供透明的因果归因。这些发现表明,相较于智能体角色模仿,结构化推理工作流为构建可扩展、可解释且可信赖的金融人工智能系统提供了可行路径。