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Hierarchical time-varying mixed-effects models in high-dimensional time series and longitudinal data studies

机译:高维时间序列和纵向数据研究中的分层时变混合效应模型

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We propose time-varying coefficient mixed-effects models for continuous multiple time series data and longitudinal data. The challenge is how to simultaneously display serial, clustering, and multivariate attributes of the data set, to which the routinely assumed two-level hierarchical model and univariate response models are not able to apply. Asymptotic properties of the proposed methods are established. We also conduct the model comparison, and find that the proposed methods outperform the traditional univariate response models, nonparametric models, and linear mixed effects models in both predicting the response and estimating the coefficient surface based on simulation studies. Finally, we have applied our methods to a real-world study on the price-volume relationship of NASDAQ stock market data.
机译:针对连续多个时间序列数据和纵向数据,我们提出了时变系数混合效应模型。面临的挑战是如何同时显示数据集的序列,聚类和多元属性,常规假设的两级层次模型和单变量响应模型无法应用于这些属性。建立了所提出方法的渐近性质。我们还进行了模型比较,发现在模拟研究的基础上,在预测响应和估计系数表面方面,所提方法均优于传统的单变量响应模型,非参数模型和线性混合效应模型。最后,我们将我们的方法应用于对纳斯达克股票市场数据的价格-数量关系的现实研究。

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