Sentiment trading with large language models
Kemal Kirtac, Guido Germano

TL;DR
This paper evaluates large language models for sentiment analysis of financial news and demonstrates that advanced LLMs like OPT outperform traditional methods in predicting stock returns and portfolio performance.
Contribution
It provides a comprehensive comparison of LLMs and traditional dictionary models in financial sentiment analysis, highlighting the superior predictive power of modern LLMs like OPT.
Findings
OPT achieves 74.4% sentiment prediction accuracy.
LLMs significantly outperform the Loughran-McDonald dictionary model.
Long-short OPT strategy has a Sharpe ratio of 3.05.
Abstract
We investigate the efficacy of large language models (LLMs) in sentiment analysis of U.S. financial news and their potential in predicting stock market returns. We analyze a dataset comprising 965,375 news articles that span from January 1, 2010, to June 30, 2023; we focus on the performance of various LLMs, including BERT, OPT, FINBERT, and the traditional Loughran-McDonald dictionary model, which has been a dominant methodology in the finance literature. The study documents a significant association between LLM scores and subsequent daily stock returns. Specifically, OPT, which is a GPT-3 based LLM, shows the highest accuracy in sentiment prediction with an accuracy of 74.4%, slightly ahead of BERT (72.5%) and FINBERT (72.2%). In contrast, the Loughran-McDonald dictionary model demonstrates considerably lower effectiveness with only 50.1% accuracy. Regression analyses highlight a…
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Taxonomy
MethodsRefunds@Expedia|||How do I get a full refund from Expedia? · 15 Ways to Contact How can i speak to someone at Delta Airlines · Cosine Annealing · {Dispute@FaQ-s}How to file a dispute with Expedia? · Linear Warmup With Cosine Annealing · Attention Dropout · Byte Pair Encoding · Linear Layer · Linear Warmup With Linear Decay · Dropout
