CPAICECLLGJan 8, 2024

Can Large Language Models Beat Wall Street? Unveiling the Potential of AI in Stock Selection

arXiv:2401.03737v252 citationsh-index: 35Neural computing & applications (Print)
Originality Incremental advance
AI Analysis

This addresses stock market investment decisions for financial analysts, though it's an incremental application of existing LLM techniques to a new domain.

This paper tackles stock selection using GPT-4 with Chain of Thought and In-Context Learning to analyze market data, achieving 10-30% excess alpha and up to 72% cumulative return over 15 months on S&P 100 stocks.

This paper introduces MarketSenseAI, an innovative framework leveraging GPT-4's advanced reasoning for selecting stocks in financial markets. By integrating Chain of Thought and In-Context Learning, MarketSenseAI analyzes diverse data sources, including market trends, news, fundamentals, and macroeconomic factors, to emulate expert investment decision-making. The development, implementation, and validation of the framework are elaborately discussed, underscoring its capability to generate actionable and interpretable investment signals. A notable feature of this work is employing GPT-4 both as a predictive mechanism and signal evaluator, revealing the significant impact of the AI-generated explanations on signal accuracy, reliability and acceptance. Through empirical testing on the competitive S&P 100 stocks over a 15-month period, MarketSenseAI demonstrated exceptional performance, delivering excess alpha of 10% to 30% and achieving a cumulative return of up to 72% over the period, while maintaining a risk profile comparable to the broader market. Our findings highlight the transformative potential of Large Language Models in financial decision-making, marking a significant leap in integrating generative AI into financial analytics and investment strategies.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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