AIOct 6, 2025

QuantAgents: Towards Multi-agent Financial System via Simulated Trading

arXiv:2510.04643v17 citationsh-index: 25EMNLP
Originality Incremental advance
AI Analysis

This work addresses the need for more realistic financial simulation systems for professionals, though it appears incremental by building on existing LLM-based agent models.

The paper tackles the problem of multi-agent financial systems by developing QuantAgents, which integrates simulated trading to evaluate investment strategies without real-world risk, achieving an overall return of nearly 300% over three years.

In this paper, our objective is to develop a multi-agent financial system that incorporates simulated trading, a technique extensively utilized by financial professionals. While current LLM-based agent models demonstrate competitive performance, they still exhibit significant deviations from real-world fund companies. A critical distinction lies in the agents' reliance on ``post-reflection'', particularly in response to adverse outcomes, but lack a distinctly human capability: long-term prediction of future trends. Therefore, we introduce QuantAgents, a multi-agent system integrating simulated trading, to comprehensively evaluate various investment strategies and market scenarios without assuming actual risks. Specifically, QuantAgents comprises four agents: a simulated trading analyst, a risk control analyst, a market news analyst, and a manager, who collaborate through several meetings. Moreover, our system incentivizes agents to receive feedback on two fronts: performance in real-world markets and predictive accuracy in simulated trading. Extensive experiments demonstrate that our framework excels across all metrics, yielding an overall return of nearly 300% over the three years (https://quantagents.github.io/).

Foundations

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