PMAICECPDec 31, 2025

Generative AI-enhanced Sector-based Investment Portfolio Construction

arXiv:2512.24526v1h-index: 18
Originality Incremental advance
AI Analysis

This addresses the problem of applying generative AI to quantitative investment portfolio construction for finance professionals, though it is incremental as it combines existing LLMs with classical methods.

This paper investigates how Large Language Models (LLMs) from multiple providers can be used to select and weight stocks for sector-based portfolios, finding that LLM-weighted portfolios outperformed sector indices during stable market conditions but underperformed during volatile periods, with hybrid approaches combining LLM selection with traditional optimization improving both performance and consistency.

This paper investigates how Large Language Models (LLMs) from leading providers (OpenAI, Google, Anthropic, DeepSeek, and xAI) can be applied to quantitative sector-based portfolio construction. We use LLMs to identify investable universes of stocks within S&P 500 sector indices and evaluate how their selections perform when combined with classical portfolio optimization methods. Each model was prompted to select and weight 20 stocks per sector, and the resulting portfolios were compared with their respective sector indices across two distinct out-of-sample periods: a stable market phase (January-March 2025) and a volatile phase (April-June 2025). Our results reveal a strong temporal dependence in LLM portfolio performance. During stable market conditions, LLM-weighted portfolios frequently outperformed sector indices on both cumulative return and risk-adjusted (Sharpe ratio) measures. However, during the volatile period, many LLM portfolios underperformed, suggesting that current models may struggle to adapt to regime shifts or high-volatility environments underrepresented in their training data. Importantly, when LLM-based stock selection is combined with traditional optimization techniques, portfolio outcomes improve in both performance and consistency. This study contributes one of the first multi-model, cross-provider evaluations of generative AI algorithms in investment management. It highlights that while LLMs can effectively complement quantitative finance by enhancing stock selection and interpretability, their reliability remains market-dependent. The findings underscore the potential of hybrid AI-quantitative frameworks, integrating LLM reasoning with established optimization techniques, to produce more robust and adaptive investment strategies.

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