School of Artificial Intelligence and Computer Science, Jiangnan University, 1800 Lihu Avenue, Wuxi 214122, Jiangsu, China.
Jiangsu Key Laboratory of Media Design and Software Technology, 1800 Lihu Avenue, Wuxi 214122, Jiangsu, China.
Comput Intell Neurosci. 2021 Nov 28;2021:8495288. doi: 10.1155/2021/8495288. eCollection 2021.
Stock price prediction is important in both financial and commercial domains, and using neural networks to forecast stock prices has been a topic of ongoing research and development. Traditional prediction models are often based on a single type of data and do not account for the interplay of many variables. This study covers a radial basis neural network modeling technique with multiview collaborative learning capabilities for incorporating the impacts of numerous elements into the prediction model. This research offers a multiview RBF neural network prediction model based on the classic RBF network by integrating a collaborative learning item with multiview learning capabilities (MV-RBF). MV-RBF can make full use of both the internal information provided by the correlation between each view and the distinct characteristics of each view to form independent sample information. By using two separate stock qualities as input feature information for trials, this study proves the viability of the multiview RBF neural network prediction model on a real data set.
股票价格预测在金融和商业领域都很重要,使用神经网络预测股票价格一直是研究和开发的主题。传统的预测模型通常基于单一类型的数据,并且没有考虑到许多变量的相互作用。本研究涵盖了一种具有多视图协作学习能力的径向基神经网络建模技术,可将众多因素的影响纳入预测模型。本研究通过整合具有多视图学习能力的协作学习项(MV-RBF),在经典 RBF 网络的基础上提出了一种多视图 RBF 神经网络预测模型(MV-RBF)。MV-RBF 可以充分利用各视图之间的相关性提供的内部信息和各视图的独特特征,形成独立的样本信息。通过将两个独立的股票质量作为输入特征信息进行试验,本研究证明了多视图 RBF 神经网络预测模型在真实数据集上的可行性。