论文标题
基于PCA的经常性神经网络对航空航天相关公司的股价预测
Share Price Prediction of Aerospace Relevant Companies with Recurrent Neural Networks based on PCA
论文作者
论文摘要
资本市场在航空航天行业的营销运营中起着至关重要的作用。但是,由于股票市场的不确定性和复杂性和许多周期性因素,上市航空公司的股票价格显着波动。这使得股价预测挑战。为了提高航空航天行业的股价预测,并很好地了解了各种指标对股票价格的影响,我们通过主要组成部分分析(PCA)和经常性神经网络的结合提供了混合预测模型。我们研究了两种类型的航空航天工业(制造商和运营商)。实验结果表明,PCA可以提高预测的准确性和效率。各种因素可能会影响预测模型的性能,例如财务数据,提取的特征,优化算法和预测模型的参数。功能的选择可能取决于历史数据的稳定性:当股价稳定时,技术功能可能是第一个选择,而当股价高波动时,基本功能可能会更好。 RNN的延迟还取决于不同类型公司的历史数据的稳定性。通过为航空航天制造商使用短期历史数据,这将是更准确的,而使用长期历史数据进行航空航天运营航空公司。开发的模型可以是自动股票预测系统中的智能代理,通过该系统,金融行业可以根据预测的未来股价做出迅速决定其经济策略和商业活动,从而提高投资回报率。目前,Covid-19严重影响航空业。开发的方法可用于预测Covid-19期间的航空航天行业的股价。
The capital market plays a vital role in marketing operations for aerospace industry. However, due to the uncertainty and complexity of the stock market and many cyclical factors, the stock prices of listed aerospace companies fluctuate significantly. This makes the share price prediction challengeable. To improve the prediction of share price for aerospace industry sector and well understand the impact of various indicators on stock prices, we provided a hybrid prediction model by the combination of Principal Component Analysis (PCA) and Recurrent Neural Networks. We investigated two types of aerospace industries (manufacturer and operator). The experimental results show that PCA could improve both accuracy and efficiency of prediction. Various factors could influence the performance of prediction models, such as finance data, extracted features, optimisation algorithms, and parameters of the prediction model. The selection of features may depend on the stability of historical data: technical features could be the first option when the share price is stable, whereas fundamental features could be better when the share price has high fluctuation. The delays of RNN also depend on the stability of historical data for different types of companies. It would be more accurate through using short-term historical data for aerospace manufacturers, whereas using long-term historical data for aerospace operating airlines. The developed model could be an intelligent agent in an automatic stock prediction system, with which, the financial industry could make a prompt decision for their economic strategies and business activities in terms of predicted future share price, thus improving the return on investment. Currently, COVID-19 severely influences aerospace industries. The developed approach can be used to predict the share price of aerospace industries at post COVID-19 time.