利用管理层声明文本情绪预测股价崩盘风险

IF 9 1区 经济学 Q1 BUSINESS, FINANCE
Xiao Yao, Dongxiao Wu, Zhiyong Li, Haoxiang Xu
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引用次数: 0

摘要

由于股票收益和波动率对投资者很重要,本研究提出将年报文本情绪纳入股价崩盘风险预测。设计/方法/方法从管理讨论中收集的特定句子及其后续分析使用文本挖掘技术进行标记并转换为数字向量,然后应用Naïve贝叶斯方法对情感进行评分,并将其用作崩溃风险预测的输入变量。结果在一系列预测模型之间进行比较,包括线性回归(LR)和机器学习技术。实验结果发现,那些包含文本情绪的预测模型明显优于仅包含会计和市场变量的基线模型。当崩溃风险由收益分布的负偏度或由下向上波动率(DUVOL)代表时,这些结论成立。值得注意的是,作者的研究侧重于考察文本情感在坠机风险预测中的预测能力,而没有考虑文本特征的其他维度,如可读性和主题内容。从各个维度探索文本特征的预测能力需要更多的分析,在未来的研究中包括最新的样本数据。原创性/价值作者的研究为文本数据在财务分析和风险管理中的信息价值提供了启示。这表明,年报中包含的软信息可能在坠机风险预测中证明是有用的,而文本情感的结合提供了整体预测性能的增量改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the prediction of stock price crash risk using textual sentiment of management statement
Purpose Since stock return and volatility matters to investors, this study proposes to incorporate the textual sentiment of annual reports in stock price crash risk prediction. Design/methodology/approach Specific sentences gathered from management discussions and their subsequent analyses are tokenized and transformed into numeric vectors using textual mining techniques, and then the Naïve Bayes method is applied to score the sentiment, which is used as an input variable for crash risk prediction. The results are compared between a collection of predictive models, including linear regression (LR) and machine learning techniques. Findings The experimental results find that those predictive models that incorporate textual sentiment significantly outperform the baseline models with only accounting and market variables included. These conclusions hold when crash risk is proxied by either the negative skewness of the return distribution or down-to-up volatility (DUVOL). Research limitations/implications It should be noted that the authors' study focuses on examining the predictive power of textual sentiment in crash risk prediction, while other dimensions of textual features such as readability and thematic contents are not considered. More analysis is needed to explore the predictive power of textual features from various dimensions, with the most recent sample data included in future studies. Originality/value The authors' study provides implications for the information value of textual data in financial analysis and risk management. It suggests that the soft information contained within annual reports may prove informative in crash risk prediction, and the incorporation of textual sentiment provides an incremental improvement in overall predictive performance.
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来源期刊
CiteScore
12.40
自引率
1.20%
发文量
112
期刊介绍: China Finance Review International publishes original and high-quality theoretical and empirical articles focusing on financial and economic issues arising from China's reform, opening-up, economic development, and system transformation. The journal serves as a platform for exchange between Chinese finance scholars and international financial economists, covering a wide range of topics including monetary policy, banking, international trade and finance, corporate finance, asset pricing, market microstructure, corporate governance, incentive studies, fiscal policy, public management, and state-owned enterprise reform.
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