Exploring Sentiment Dynamics and Predictive Behaviors in Cryptocurrency Discussions by Few-Shot Learning with Large Language Models
This study performs analysis of Predictive statements, Hope speech, and Regret Detection behaviors within cryptocurrency-related discussions, leveraging advanced natural language processing techniques. We introduce a novel classification scheme named "Prediction statements," categorizing c...
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Zusammenfassung: | This study performs analysis of Predictive statements, Hope speech, and
Regret Detection behaviors within cryptocurrency-related discussions,
leveraging advanced natural language processing techniques. We introduce a
novel classification scheme named "Prediction statements," categorizing
comments into Predictive Incremental, Predictive Decremental, Predictive
Neutral, or Non-Predictive categories. Employing GPT-4o, a cutting-edge large
language model, we explore sentiment dynamics across five prominent
cryptocurrencies: Cardano, Binance, Matic, Fantom, and Ripple. Our analysis
reveals distinct patterns in predictive sentiments, with Matic demonstrating a
notably higher propensity for optimistic predictions. Additionally, we
investigate hope and regret sentiments, uncovering nuanced interplay between
these emotions and predictive behaviors. Despite encountering limitations
related to data volume and resource availability, our study reports valuable
discoveries concerning investor behavior and sentiment trends within the
cryptocurrency market, informing strategic decision-making and future research
endeavors. |
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DOI: | 10.48550/arxiv.2409.02836 |