AAPM: Large Language Model Agent-based Asset Pricing Models
In this study, we propose a novel asset pricing approach, LLM Agent-based Asset Pricing Models (AAPM), which fuses qualitative discretionary investment analysis from LLM agents and quantitative manual financial economic factors to predict excess asset returns. The experimental results show that our...
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Zusammenfassung: | In this study, we propose a novel asset pricing approach, LLM Agent-based
Asset Pricing Models (AAPM), which fuses qualitative discretionary investment
analysis from LLM agents and quantitative manual financial economic factors to
predict excess asset returns. The experimental results show that our approach
outperforms machine learning-based asset pricing baselines in portfolio
optimization and asset pricing errors. Specifically, the Sharpe ratio and
average $|\alpha|$ for anomaly portfolios improved significantly by 9.6\% and
10.8\% respectively. In addition, we conducted extensive ablation studies on
our model and analysis of the data to reveal further insights into the proposed
method. |
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DOI: | 10.48550/arxiv.2409.17266 |