Integrating LLM-Generated Views into Mean-Variance Optimization Using the Black-Litterman Model
By: Youngbin Lee , Yejin Kim , Suin Kim and more
Potential Business Impact:
Helps computers pick better stocks for investing.
Portfolio optimization faces challenges due to the sensitivity in traditional mean-variance models. The Black-Litterman model mitigates this by integrating investor views, but defining these views remains difficult. This study explores the integration of large language models (LLMs) generated views into portfolio optimization using the Black-Litterman framework. Our method leverages LLMs to estimate expected stock returns from historical prices and company metadata, incorporating uncertainty through the variance in predictions. We conduct a backtest of the LLM-optimized portfolios from June 2024 to February 2025, rebalancing biweekly using the previous two weeks of price data. As baselines, we compare against the S&P 500, an equal-weighted portfolio, and a traditional mean-variance optimized portfolio constructed using the same set of stocks. Empirical results suggest that different LLMs exhibit varying levels of predictive optimism and confidence stability, which impact portfolio performance. The source code and data are available at https://github.com/youngandbin/LLM-MVO-BLM.
Similar Papers
LLM-Enhanced Black-Litterman Portfolio Optimization
Portfolio Management
AI helps pick winning stocks by guessing market trends.
Latent Variable Estimation in Bayesian Black-Litterman Models
Portfolio Management
Makes investing smarter using only past market data.
Black-Litterman and ESG Portfolio Optimization
Portfolio Management
Makes investing money grow much faster.