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Model selection for stock prices data

机译:股票价格数据的模型选择

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The geometric Brownian motion (GBM) is very popular in modeling the dynamics of stock prices. However, the constant volatility assumption is questionable and many models with nonconstant volatility have been developed. In the papers [7,12] the authors introduce a regime switching process where in each regime the process is driven by GBM and the change in regime is defined by the crossing of a threshold. In this paper we used Akaike's and Bayesian information criteria to show that the GBM with regimes provides a better fit than the GBM. We also perform a forecasting comparison of the models for two selected companies.
机译:几何布朗运动(GBM)在模拟股票价格动态方面非常受欢迎。但是,恒定波动率的假设值得怀疑,并且已经开发出许多具有非恒定波动率的模型。在论文[7,12]中,作者介绍了一种政权转换过程,其中在每个政权中,该过程都是由GBM驱动的,而政权的变化是通过阈值的交叉来定义的。在本文中,我们使用了Akaike和贝叶斯信息准则,表明具有管理体制的GBM比GBM具有更好的拟合度。我们还对两家选定公司的模型进行了预测比较。

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