冠状病毒疫情对股价预测精度的影响

Jia‐Yen Huang, Wei-Zhen Lin
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引用次数: 0

摘要

2019年底,冠状病毒开始在全球蔓延,对国际政治和经济产生重大影响。面对疫情,全球股市剧烈波动。该研究旨在研究疫情对股票预测模型预测变量的影响,该模型使用基于芯片的变量和从社交媒体平台上发布的评论中得出的情绪变量。本研究首先进行特征工程分析,确定适合构建预测模型的指标。然后,分析建立了一套短语规则,为回复中表达的观点分配情绪分数,并评估对预测准确性的影响。结果表明,影响股市变化的主要芯片指标在疫情前后存在差异。因此,需要分别建立预测模型,对两个时期进行分析。此外,结果表明,依赖基于回复的情绪得分作为预测变量的模型提供了更准确的股票价格变化预测。
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The Effect of the Coronavirus Pandemic on the Prediction Accuracy of Stock Price
In late 2019, the coronavirus began to spread around the world and impact international politics and economies significantly. In the face of the pandemic, stock markets around the world fluctuated sharply. The study aims to investigate the impact of the pandemic on the predictive variables of a stock prediction model, formed using chip-based variables and sentiment variables derived from comments posted on a social media platform. This study first performs feature engineering analysis to identify the indicators suitable for constructing the prediction model. The analysis then establishes a set of phrase rules to assign sentiment scores to the opinions expressed in replies and evaluates the effect on the accuracy of predictions. The results show that the major chip-based indicators affecting changes in the stock market differ before and after the pandemic. Hence, prediction models should be established separately for analysis in either period. In addition, the results indicate that the model relying on reply-based sentiment scores as a predictive variable provides more accurate predictions of stock price change.
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