Department of Computer Sciences, Baba Ghulam Shah Badshah University, Rajouri 185234, India.
Department of Computer Science & Engineering, National Institute of Technology, Srinagar, Jammu and Kashmir, India.
Comput Intell Neurosci. 2022 Aug 11;2022:7097044. doi: 10.1155/2022/7097044. eCollection 2022.
The unprecedented Corona Virus Disease (COVID-19) pandemic has put the world in peril and shifted global landscape in unanticipated ways. The SARSCoV2 virus, which caused the COVID-19 outbreak, first appeared in Wuhan, Hubei Province, China, in December 2019 and quickly spread around the world. This pandemic is not only a global health crisis, but it has caused the major global economic depression. As soon as the virus spread, stock market prices plummeted and volatility increased. Predicting the market during this outbreak has been of substantial importance and is the primary motivation to carry out this work. Given the nonlinearity and dynamic nature of stock data, the prediction of stock market is a challenging task. The machine learning models have proven to be a good choice for the development of effective and efficient prediction systems. In recent years, the application of hyperparameter optimization techniques for the development of highly accurate models has increased significantly. In this study, a customized neural network model is proposed and the power of hyperparameter optimization in modelling stock index prices is explored. A novel dataset is generated using nine standard technical indicators and COVID-19 data. In addition, the primary focus is on the importance of selection of optimal features and their preprocessing. The utilization of multiple feature ranking techniques combined with extensive hyperparameter optimization procedures is comprehensive for the prediction of stock index prices. Moreover, the model is evaluated by comparing it with other models, and results indicate that the proposed model outperforms other models. Given the detailed design methodology, preprocessing, exploratory feature analysis, and hyperparameter optimization procedures, this work gives a significant contribution to stock analysis research community during this pandemic.
史无前例的冠状病毒病(COVID-19)大流行使世界陷入危险之中,并以意想不到的方式改变了全球格局。导致 COVID-19 爆发的 SARSCoV2 病毒于 2019 年 12 月首次在中国湖北省武汉市出现,并迅速在全球范围内传播。这场大流行不仅是一场全球卫生危机,还导致了全球主要经济衰退。病毒一传播,股市价格就暴跌,波动性增加。在疫情期间预测市场一直具有重要意义,也是进行这项工作的主要动机。鉴于股票数据的非线性和动态性质,股票市场的预测是一项具有挑战性的任务。机器学习模型已被证明是开发有效和高效预测系统的不错选择。近年来,超参数优化技术在开发高精度模型方面的应用显著增加。在这项研究中,提出了一种定制的神经网络模型,并探讨了超参数优化在建模股票指数价格方面的作用。使用九个标准技术指标和 COVID-19 数据生成了一个新的数据集。此外,主要重点是选择最佳特征及其预处理的重要性。结合多种特征排序技术和广泛的超参数优化过程,可以全面预测股票指数价格。此外,通过与其他模型进行比较来评估模型,结果表明所提出的模型优于其他模型。鉴于详细的设计方法、预处理、探索性特征分析和超参数优化过程,这项工作在大流行期间为股票分析研究界做出了重大贡献。