Karthick Myilvahanan J, Mohana Sundaram N
Department of Computer Science and Engineering, Karpagam Academy of Higher Education, Coimbatore, India.
Network. 2025 Aug;36(3):1185-1220. doi: 10.1080/0954898X.2024.2358957. Epub 2024 Jun 10.
Predicting the stock market is one of the significant chores and has a successful prediction of stock rates, and it helps in making correct decisions. The prediction of the stock market is the main challenge due to blaring, chaotic data as well as non-stationary data. In this research, the support vector machine (SVM) is devised for performing an effective stock market prediction. At first, the input time series data is considered and the pre-processing of data is done by employing a standard scalar. Then, the time intrinsic features are extracted and the suitable features are selected in the feature selection stage by eliminating other features using recursive feature elimination. Afterwards, the Long Short-Term Memory (LSTM) based prediction is done, wherein LSTM is trained to employ Aquila circle-inspired optimization (ACIO) that is newly introduced by merging Aquila optimizer (AO) with circle-inspired optimization algorithm (CIOA). On the other hand, delay-based matrix formation is conducted by considering input time series data. After that, convolutional neural network (CNN)-based prediction is performed, where CNN is tuned by the same ACIO. Finally, stock market prediction is executed utilizing SVM by fusing the predicted outputs attained from LSTM-based prediction and CNN-based prediction. Furthermore, the SVM attains better outcomes of minimum mean absolute percentage error; (MAPE) and normalized root-mean-square error (RMSE) with values about 0.378 and 0.294.
预测股票市场是一项重要的工作,成功预测股票价格有助于做出正确决策。由于数据嘈杂、混乱以及非平稳性,股票市场的预测是一个主要挑战。在本研究中,设计了支持向量机(SVM)来进行有效的股票市场预测。首先,考虑输入的时间序列数据,并使用标准标量对数据进行预处理。然后,提取时间内在特征,并在特征选择阶段通过递归特征消除去除其他特征来选择合适的特征。之后,进行基于长短期记忆(LSTM)的预测,其中LSTM通过将天鹰座优化器(AO)与圆启发式优化算法(CIOA)合并新引入的天鹰座循环启发式优化(ACIO)进行训练。另一方面,通过考虑输入时间序列数据进行基于延迟的矩阵形成。之后,进行基于卷积神经网络(CNN)的预测,并通过相同的ACIO对CNN进行调优。最后,通过融合基于LSTM的预测和基于CNN的预测获得的预测输出,利用SVM执行股票市场预测。此外,SVM取得了更好的结果,最小平均绝对百分比误差(MAPE)和归一化均方根误差(RMSE)分别约为0.378和0.294。