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Beyond Prompting: An Autonomous Framework for Systematic Factor Investing via Agentic AI

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  • Allen Yikuan Huang
  • Zheqi Fan

Abstract

This paper develops an autonomous framework for systematic factor investing via agentic AI. Rather than relying on sequential manual prompts, our approach operationalizes the model as a self-directed engine that endogenously formulates interpretable trading signals. To mitigate data snooping biases, this closed-loop system imposes strict empirical discipline through out-of-sample validation and economic rationale requirements. Applying this methodology to the U.S. equity market, we document that long-short portfolios formed on the simple linear combination of signals deliver an annualized Sharpe ratio of 3.11 and a return of 59.53%. Finally, our empirics demonstrate that self-evolving AI offers a scalable and interpretable paradigm.

Suggested Citation

  • Allen Yikuan Huang & Zheqi Fan, 2026. "Beyond Prompting: An Autonomous Framework for Systematic Factor Investing via Agentic AI," Papers 2603.14288, arXiv.org, revised Apr 2026.
  • Handle: RePEc:arx:papers:2603.14288
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    Cited by:

    1. Zheqi Fan & Meng Melody Wang & Yifan Ye, 2026. "On options-driven realized volatility forecasting: Information gains via rough volatility model," Papers 2604.02743, arXiv.org, revised Apr 2026.

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