Revisiting time-varying dynamics in stock market forecasting: A multi-source sentiment analysis approach with large language model

IF 6.7 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Zhiqi Shao , Xusheng Yao , Feng Chen , Ze Wang , Junbin Gao
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引用次数: 0

Abstract

This paper presents the Heterogeneous Dynamic Seemingly Unrelated Regression with Dynamic Linear Models (HD-SURDLM), an innovative framework for stock return prediction that combines cutting-edge sentiment analysis with dynamic financial modeling. The model integrates sentiment data from 2.5 million Twitter posts and various news sources, utilizing state-of-the-art sentiment analysis tools such as VADER, TextBlob, and RoBERTa. HD-SURDLM refines Gibbs sampling for enhanced numerical stability and efficiency while capturing cross-sectional dependencies across multiple assets such as a portfolio. The model consistently outperforms traditional methods like LSTM, Random Forest, and RNN in forecasting accuracy. Empirical results show a 1.02% improvement in 1-day horizon forecasts, a 0.42% gain for 20-day predictions, and a 0.36% increase for 50-day forecasts. By effectively merging public sentiment with dynamic asset modeling, HD-SURDLM offers substantial improvements in short- and long-term prediction accuracy. Its capacity to capture both cross-sectional insights and temporal dynamics makes it an invaluable tool for investors, traders, and financial institutions navigating sentiment-driven markets. HD-SURDLM not only enhances predictive accuracy but also provides a robust decision-support system for financial stakeholders.
回顾股票市场预测中的时变动态:基于大语言模型的多源情绪分析方法
本文提出了基于动态线性模型的异质动态看似无关回归(HD-SURDLM),这是一种将前沿情绪分析与动态金融建模相结合的股票收益预测创新框架。该模型利用最先进的情感分析工具,如VADER、TextBlob和RoBERTa,整合了来自250万条Twitter帖子和各种新闻来源的情感数据。HD-SURDLM改进了Gibbs采样,提高了数值稳定性和效率,同时捕获了多个资产(如投资组合)之间的横断面依赖关系。该模型在预测精度上始终优于LSTM、Random Forest和RNN等传统方法。实证结果显示,1天的预测提高了1.02%,20天的预测提高了0.42%,50天的预测提高了0.36%。通过有效地将公众情绪与动态资产建模相结合,HD-SURDLM在短期和长期预测精度方面提供了实质性的改进。它能够捕捉横截面洞察和时间动态,这使其成为投资者、交易员和金融机构驾驭情绪驱动型市场的宝贵工具。HD-SURDLM不仅提高了预测精度,而且为金融利益相关者提供了强大的决策支持系统。
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来源期刊
Decision Support Systems
Decision Support Systems 工程技术-计算机:人工智能
CiteScore
14.70
自引率
6.70%
发文量
119
审稿时长
13 months
期刊介绍: The common thread of articles published in Decision Support Systems is their relevance to theoretical and technical issues in the support of enhanced decision making. The areas addressed may include foundations, functionality, interfaces, implementation, impacts, and evaluation of decision support systems (DSSs).
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