TY - GEN
T1 - LLM-Guided Evolutionary Strategy Generation for Quantitative Trading
AU - Zhang, Di
AU - Jiang, Zhengyong
AU - Ji, Qiong
AU - Liu, Hengyan
AU - Wang, Tianshi
AU - Stefanidis, Angelos
N1 - Publisher Copyright:
© 2025 IEEE.
PY - 2025
Y1 - 2025
N2 - This paper proposes LLM-GA, a novel framework that integrates large language models (LLMs) with genetic algorithms (GA) for automated trading strategy generation. The system architecture comprises three synergistic modules: 1) a signal generator extracting technical, fundamental, and sentiment indicators; 2) an LLM-enhanced GA core that initializes seed strategies and performs semantically-aware crossover/mutation operations; and 3) an execution module forming a closed-loop adaptive system. Unlike traditional GA that randomly combines signals, our approach leverages LLMs' financial reasoning capability to maintain logical consistency during strategy evolution. Experiments based on historical data of the Chinese stock market in the past five years (2020-2024) show that, LLM-GA achieves superior risk-adjusted returns (Annualized Excess Return (AER)=12.3%, Maximum Drawdown (MDD)=35.2%) compared to baseline methods including vanilla GA, PSO, and ensemble learning. Ablation studies reveal that LLM-guided initialization improves starting strategy quality by 215%, while semantic crossover reduces invalid strategies by 83.5%. Despite performance gaps against RL methods (2-3% lower AER), our method provides unique advantages in strategy interpretability and diversity, addressing critical limitations in black-box approaches like reinforcement learning. The work establishes a new paradigm for human-AI collaborative quantitative strategy development.
AB - This paper proposes LLM-GA, a novel framework that integrates large language models (LLMs) with genetic algorithms (GA) for automated trading strategy generation. The system architecture comprises three synergistic modules: 1) a signal generator extracting technical, fundamental, and sentiment indicators; 2) an LLM-enhanced GA core that initializes seed strategies and performs semantically-aware crossover/mutation operations; and 3) an execution module forming a closed-loop adaptive system. Unlike traditional GA that randomly combines signals, our approach leverages LLMs' financial reasoning capability to maintain logical consistency during strategy evolution. Experiments based on historical data of the Chinese stock market in the past five years (2020-2024) show that, LLM-GA achieves superior risk-adjusted returns (Annualized Excess Return (AER)=12.3%, Maximum Drawdown (MDD)=35.2%) compared to baseline methods including vanilla GA, PSO, and ensemble learning. Ablation studies reveal that LLM-guided initialization improves starting strategy quality by 215%, while semantic crossover reduces invalid strategies by 83.5%. Despite performance gaps against RL methods (2-3% lower AER), our method provides unique advantages in strategy interpretability and diversity, addressing critical limitations in black-box approaches like reinforcement learning. The work establishes a new paradigm for human-AI collaborative quantitative strategy development.
KW - Algorithmic Trading
KW - Chinese Stock Market
KW - Genetic Algorithms
KW - Large Language Models
UR - https://www.scopus.com/pages/publications/105033153573
U2 - 10.1109/SMC58881.2025.11343400
DO - 10.1109/SMC58881.2025.11343400
M3 - Conference Proceeding
AN - SCOPUS:105033153573
T3 - Conference Proceedings - IEEE International Conference on Systems, Man and Cybernetics
SP - 3665
EP - 3670
BT - 2025 IEEE International Conference on Systems, Man, and Cybernetics
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2025 IEEE International Conference on Systems, Man, and Cybernetics, SMC 2025
Y2 - 5 October 2025 through 8 October 2025
ER -