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Main Authors: Kou, Zhizhuo, Yu, Holam, Luo, Junyu, Peng, Jingshu, Li, Xujia, Liu, Chengzhong, Dai, Juntao, Chen, Lei, Han, Sirui, Guo, Yike
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2409.06289
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author Kou, Zhizhuo
Yu, Holam
Luo, Junyu
Peng, Jingshu
Li, Xujia
Liu, Chengzhong
Dai, Juntao
Chen, Lei
Han, Sirui
Guo, Yike
author_facet Kou, Zhizhuo
Yu, Holam
Luo, Junyu
Peng, Jingshu
Li, Xujia
Liu, Chengzhong
Dai, Juntao
Chen, Lei
Han, Sirui
Guo, Yike
contents We present a novel three-stage framework leveraging Large Language Models (LLMs) within a risk-aware multi-agent system for automate strategy finding in quantitative finance. Our approach addresses the brittleness of traditional deep learning models in financial applications by: employing prompt-engineered LLMs to generate executable alpha factor candidates across diverse financial data, implementing multimodal agent-based evaluation that filters factors based on market status, predictive quality while maintaining category balance, and deploying dynamic weight optimization that adapts to market conditions. Experimental results demonstrate the robust performance of the strategy in Chinese & US market regimes compared to established benchmarks. Our work extends LLMs capabilities to quantitative trading, providing a scalable architecture for financial signal extraction and portfolio construction. The overall framework significantly outperforms all benchmarks with 53.17% cumulative return on SSE50 (Jan 2023 to Jan 2024), demonstrating superior risk-adjusted performance and downside protection on the market.
format Preprint
id arxiv_https___arxiv_org_abs_2409_06289
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Automate Strategy Finding with LLM in Quant Investment
Kou, Zhizhuo
Yu, Holam
Luo, Junyu
Peng, Jingshu
Li, Xujia
Liu, Chengzhong
Dai, Juntao
Chen, Lei
Han, Sirui
Guo, Yike
Portfolio Management
Machine Learning
Pricing of Securities
We present a novel three-stage framework leveraging Large Language Models (LLMs) within a risk-aware multi-agent system for automate strategy finding in quantitative finance. Our approach addresses the brittleness of traditional deep learning models in financial applications by: employing prompt-engineered LLMs to generate executable alpha factor candidates across diverse financial data, implementing multimodal agent-based evaluation that filters factors based on market status, predictive quality while maintaining category balance, and deploying dynamic weight optimization that adapts to market conditions. Experimental results demonstrate the robust performance of the strategy in Chinese & US market regimes compared to established benchmarks. Our work extends LLMs capabilities to quantitative trading, providing a scalable architecture for financial signal extraction and portfolio construction. The overall framework significantly outperforms all benchmarks with 53.17% cumulative return on SSE50 (Jan 2023 to Jan 2024), demonstrating superior risk-adjusted performance and downside protection on the market.
title Automate Strategy Finding with LLM in Quant Investment
topic Portfolio Management
Machine Learning
Pricing of Securities
url https://arxiv.org/abs/2409.06289