Hierarchical AI Multi-Agent Fundamental Investing: Evidence from China’s A‑Share Market
Oct 1, 2025·,,
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Chujun He
Zhonghao Huang
Xiangguo Li
Ye Luo
Kewei Ma
Yuxuan Xiong
Xiaowei Zhang
Mingyang Zhao

Abstract
We present a multi-agent, AI-driven framework for fundamental investing that integrates macro indicators, industry-level and firm-specific information to construct optimized equity portfolios. The architecture comprises: (i) a Macro agent that dynamically screens and weights sectors based on evolving economic indicators and industry performance; (ii) four firm-level agents—Fundamental, Technical, Report, and News—that conduct in-depth analyses of individual firms to ensure both breadth and depth of coverage; (iii) a Portfolio agent that uses reinforcement learning to combine the agent outputs into a unified policy to generate the trading strategy; and (iv) a Risk Control agent that adjusts portfolio positions in response to market volatility. We evaluate the system on the constituents by the CSI 300 Index of China’s A-share market and find that it consistently outperforms standard benchmarks and a state-of-the-art multi-agent trading system on risk-adjusted returns and drawdown control. Our core contribution is a hierarchical multi-agent design that links top-down macro screening with bottom-up fundamental analysis, offering a robust and extensible approach to factor-based portfolio construction.
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Authors
Asociate Professor in Economics and Finance, Associate Director of the Institute of Digital Economy and Innovation at HKU Business School.
Authors
Authors

Authors
I am an Associate Professor at HKUST, jointly appointed in the Department of Industrial Engineering and Decision Analytics and the Department of Economics, and the Academic Director of the MSc in FinTech program. I serve as an Associate Editor for several leading journals in the field, including Management Science, Operations Research, Navel Research Logistics, and Queueing Systems.

Authors
MPhil student in the Department of Industrial Engineering and Decision Analytics, HKUST.