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Comparing LLMs for Sentiment Analysis in Financial Market News

Comparing LLMs for Sentiment Analysis in Financial Market News ArXiv ID: 2510.15929 “View on arXiv” Authors: Lucas Eduardo Pereira Teles, Carlos M. S. Figueiredo Abstract This article presents a comparative study of large language models (LLMs) in the task of sentiment analysis of financial market news. This work aims to analyze the performance difference of these models in this important natural language processing task within the context of finance. LLM models are compared with classical approaches, allowing for the quantification of the benefits of each tested model or approach. Results show that large language models outperform classical models in the vast majority of cases. ...

October 3, 2025 · 2 min · Research Team

Anticipatory Gains and Event-Driven Losses in Blockchain-Based Fan Tokens: Evidence from the FIFA World Cup

Anticipatory Gains and Event-Driven Losses in Blockchain-Based Fan Tokens: Evidence from the FIFA World Cup ArXiv ID: 2403.15810 “View on arXiv” Authors: Unknown Abstract National football teams increasingly issue tradeable blockchain-based fan tokens to strategically enhance fan engagement. This study investigates the impact of 2022 World Cup matches on the dynamic performance of each team’s fan token. The event study uncovers fan token returns surged six months before the World Cup, driven by positive anticipation effects. However, intraday analysis reveals a reversal of fan token returns consistently declining and trading volumes rising as matches unfold. To explain findings, we uncover asymmetries whereby defeats in high-stake matches caused a plunge in fan token returns, compared to low-stake matches, intensifying in magnitude for knockout matches. Contrarily, victories enhance trading volumes, reflecting increased market activity without a corresponding positive effect on returns. We align findings with the classic market adage “buy the rumor, sell the news,” unveiling cognitive biases and nuances in investor sentiment, cautioning the dichotomy of pre-event optimism and subsequent performance declines. ...

March 23, 2024 · 2 min · Research Team

Stock Market Sentiment Classification and Backtesting via Fine-tuned BERT

Stock Market Sentiment Classification and Backtesting via Fine-tuned BERT ArXiv ID: 2309.11979 “View on arXiv” Authors: Unknown Abstract With the rapid development of big data and computing devices, low-latency automatic trading platforms based on real-time information acquisition have become the main components of the stock trading market, so the topic of quantitative trading has received widespread attention. And for non-strongly efficient trading markets, human emotions and expectations always dominate market trends and trading decisions. Therefore, this paper starts from the theory of emotion, taking East Money as an example, crawling user comment titles data from its corresponding stock bar and performing data cleaning. Subsequently, a natural language processing model BERT was constructed, and the BERT model was fine-tuned using existing annotated data sets. The experimental results show that the fine-tuned model has different degrees of performance improvement compared to the original model and the baseline model. Subsequently, based on the above model, the user comment data crawled is labeled with emotional polarity, and the obtained label information is combined with the Alpha191 model to participate in regression, and significant regression results are obtained. Subsequently, the regression model is used to predict the average price change for the next five days, and use it as a signal to guide automatic trading. The experimental results show that the incorporation of emotional factors increased the return rate by 73.8% compared to the baseline during the trading period, and by 32.41% compared to the original alpha191 model. Finally, we discuss the advantages and disadvantages of incorporating emotional factors into quantitative trading, and give possible directions for further research in the future. ...

September 21, 2023 · 2 min · Research Team

The Financial Psychology of Worry and Women

The Financial Psychology of Worry and Women ArXiv ID: ssrn-1093351 “View on arXiv” Authors: Unknown Abstract This paper provides a review of significant academic studies and non-academic research endeavors in the realm of negative emotions (with an emphasis on worry), Keywords: Behavioral Finance, Market Sentiment, Negative Emotions, Worry, Investor Psychology, Behavioral Finance Complexity vs Empirical Score Math Complexity: 0.0/10 Empirical Rigor: 1.0/10 Quadrant: Philosophers Why: The paper is a review of existing studies on psychology and worry with no mathematical formulas or advanced derivations, and it lacks empirical backtesting, datasets, or statistical metrics. flowchart TD A["Research Goal: Examine<br>Worry in Financial Decision-Making"] --> B["Methodology: Literature Review"] B --> C["Data/Inputs:<br>Academic & Non-Academic Studies"] C --> D["Computational Process:<br>Synthesis & Thematic Analysis"] D --> E["Outcome 1: Worry as<br>Cognitive Distortion"] D --> F["Outcome 2: Impact on<br>Market Sentiment"] D --> G["Outcome 3: Gender-Specific<br>Behavioral Patterns"]

February 15, 2008 · 1 min · Research Team