后 COVID 时代的市场动态:股指期货收益中的投资者情绪和行为特征的数据驱动分析

IF 6.7 2区 管理学 Q1 MANAGEMENT
Jie Gao, Chunguo Fan, Ting Liu, Xiuran Bai, Wenyong Li , Huimin Tan
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引用次数: 0

摘要

本文旨在加强对 COVID-19 大流行等突发事件期间股市行为的理解和预测,特别关注市场关注度、社交媒体情绪指标的作用以及突发事件的发展和演变。我们强调,用于预测股指期货价格的常用交易和技术指标往往忽略了投资者情绪和大流行病相关数据,而这些数据有助于预测重大突发事件期间的股市行为。为此,我们提出了一种多方面的方法,将这些被忽视的因素纳入其中。首先,我们整合了从股票留言板评论中得出的投资者情绪以及受大流行病发展和演变影响的投资者行为,从而增强了预测指数系统。这种创新方法完善了我们模型的预测能力,并通过比较分析得到了验证。其次,我们引入了预测股指期货收盘价的混合框架。通过将收盘价序列分解为长期趋势、周期性变化和随机波动,我们创建了一个更细致的预测。使用适当的时间序列算法分别预测每个组成部分,从而提高整体预测准确性,并提供通用性和可扩展性。第三,我们设计了一种动态交易策略,将随时间演变的大流行病相关数据视为关键因素。该策略可适应不断变化的市场条件,我们的实验证据证明了它在获得更高回报和降低相关风险方面的有效性。我们的发现强调了将投资者情绪和大流行病相关数据纳入股市预测的重要性,从而为市场预测和风险管理提供了一种更全面、更准确的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Embracing market dynamics in the post-COVID era: A data-driven analysis of investor sentiment and behavioral characteristics in stock index futures returns
This paper aims to enhance the understanding and prediction of stock market behavior during unexpected events like the COVID-19 pandemic, with a specific focus on the role of market attention, social media sentiment indicators, and the development and evolution of unexpected events. We highlight that the common trading and technical indicators used in forecasting the stock index futures prices often overlook investor sentiment and pandemic-related data, which can be instrumental in predicting stock market behavior during significant emergencies. In response, we propose a multi-faceted approach that incorporates these overlooked factors. First, we enhance the predictive index system by integrating investor sentiment, derived from stock message board commentary, and investor behavior influenced by the development and evolution of the pandemic. This innovative approach refines our model's predictive capabilities and is validated through comparative analysis. Second, we introduce a hybrid framework for predicting stock index futures closing prices. By decomposing the closing price series into long-term trends, cyclical variations, and random fluctuations, we create a more nuanced forecast. Each component is predicted separately using appropriate time-series algorithms, improving the overall predictive accuracy and offering generalizability and scalability. Third, we devise a dynamic trading strategy that recognizes pandemic-related data, evolving over time, as a pivotal factor. This strategy is adaptable to evolving market conditions, and our experimental evidence demonstrates its effectiveness in yielding higher returns and reducing associated risks. Our findings underline the importance of incorporating investor sentiment and pandemic-related data into stock market predictions, thus offering a more comprehensive and accurate approach to market forecasting and risk management.
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来源期刊
Omega-international Journal of Management Science
Omega-international Journal of Management Science 管理科学-运筹学与管理科学
CiteScore
13.80
自引率
11.60%
发文量
130
审稿时长
56 days
期刊介绍: Omega reports on developments in management, including the latest research results and applications. Original contributions and review articles describe the state of the art in specific fields or functions of management, while there are shorter critical assessments of particular management techniques. Other features of the journal are the "Memoranda" section for short communications and "Feedback", a correspondence column. Omega is both stimulating reading and an important source for practising managers, specialists in management services, operational research workers and management scientists, management consultants, academics, students and research personnel throughout the world. The material published is of high quality and relevance, written in a manner which makes it accessible to all of this wide-ranging readership. Preference will be given to papers with implications to the practice of management. Submissions of purely theoretical papers are discouraged. The review of material for publication in the journal reflects this aim.
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