论文标题
披露公司年度报告后预测股票价格变动:2021年中国CSI 300股案例研究
Predicting Stock Price Movement after Disclosure of Corporate Annual Reports: A Case Study of 2021 China CSI 300 Stocks
论文作者
论文摘要
在当前的股票市场中,计算机科学和技术越来越广泛地用于分析股票。与大多数相关的机器学习股价预测工作不同,这项工作研究了公司年度报告披露后第二天的股票价格趋势。我们使用各种不同的模型,包括决策树,逻辑回归,随机森林,神经网络,原型网络。我们使用两组财务指标(密钥和扩展)进行实验,这些财务指标是从公司披露的Eastmoney网站上获得的,最后我们发现这些模型的行为不佳来预测趋势。此外,我们还过滤了ROE大于0.15的库存,净现金比大于0.9。我们得出的结论是,根据基于公司刚发布的年度报告的财务指标,披露后第二天的股票价格变动的可预测性较弱,最高准确性约为59.6%,在我们的随机森林分类器设置的测试中,股票价格最高约为0.56,而股票过滤量并不能改善性能。在所有这些模型中,随机森林总体上表现最好,这些模型符合某些工作的发现。
In the current stock market, computer science and technology are more and more widely used to analyse stocks. Not same as most related machine learning stock price prediction work, this work study the predicting the tendency of the stock price on the second day right after the disclosure of the companies' annual reports. We use a variety of different models, including decision tree, logistic regression, random forest, neural network, prototypical networks. We use two sets of financial indicators (key and expanded) to conduct experiments, these financial indicators are obtained from the EastMoney website disclosed by companies, and finally we find that these models are not well behaved to predict the tendency. In addition, we also filter stocks with ROE greater than 0.15 and net cash ratio greater than 0.9. We conclude that according to the financial indicators based on the just-released annual report of the company, the predictability of the stock price movement on the second day after disclosure is weak, with maximum accuracy about 59.6% and maximum precision about 0.56 on our test set by the random forest classifier, and the stock filtering does not improve the performance. And random forests perform best in general among all these models which conforms to some work's findings.