基于神经霍克斯模型的股票价格运动行为建模

K. Hu, Xiang Ji, Jie Xie, Jingmin Yu
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引用次数: 0

摘要

传统的价格走势是通过机器学习方法和神经网络方法建模的。然而,预测往往与相关性有关,而不是因果关系。在本文中,我们不仅考虑了相关性,而且借用了神经霍克斯模型的思想来帮助建立股票价格动态之间的衰减效应。在工作中,我们使用对数似然来评估结果的预测质量。结果表明,我们的方法具有一定的竞争力,Neural Hawkes模型在5天预测和10天预测中seq(结合时间和类型)的对数似然值分别达到-0.6358和-2.3878,优于Hawkes模型的-4.3243和-4.5841,以及Inhibition Hawkes模型的-11.353和-24.8147。
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Modeling Movement Behavior of Stock Price Using Neural Hawkes Model
Traditional price movement is modeled by the machine learning methods and neural network methods. However, the prediction is often concerned with the correlations rather than the causality. In this paper, we do not only consider the correlation but also borrow the idea of the Neural Hawkes model to help build the decaying effects between the stock price dynamics. In the work, we evaluate the prediction quality of the results using the log likelihood. Results show that our methods are competitive, the Neural Hawkes model achieved log likelihood value of seq (combining the time and type) to -0.6358 and -2.3878 in five days prediction and ten days prediction respectively, better than -4.3243 and -4.5841 by Hawkes model and -11.353 and -24.8147 by Inhibition Hawkes model.
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