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首页> 外文期刊>Frontiers in Psychology >Gaussian Process Panel Modeling—Machine Learning Inspired Analysis of Longitudinal Panel Data
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Gaussian Process Panel Modeling—Machine Learning Inspired Analysis of Longitudinal Panel Data

机译:高斯工艺面板建模 - 机器学习灵感分析纵板数据

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摘要

In this article, we extend the Bayesian nonparametric regression method Gaussian Process Regression to the analysis of longitudinal panel data. We call this new approach Gaussian Process Panel Modeling (GPPM). GPPM provides great flexibility because of the large number of models it can represent. It allows classical statistical inference as well as machine learning inspired predictive modeling. GPPM offers frequentist and Bayesian inference without the need to resort to Markov chain Monte Carlo-based approximations, which makes the approach exact and fast. GPPMs are defined using the kernel-language, which can express many traditional modeling approaches for longitudinal data, such as linear structural equation models, multilevel models, or state-space models but also various commonly used machine learning approaches. As a result, GPPM is uniquely able to represent hybrid models combining traditional parametric longitudinal models and nonparametric machine learning models. In the present paper, we introduce GPPM and illustrate its utility through theoretical arguments as well as simulated and empirical data.
机译:在本文中,我们扩展了贝叶斯非参数回归方法高斯过程回归到纵向面板数据的分析。我们称这种新方法高斯工艺面板建模(GPPM)。 GPPM由于它可以代表的大量模型提供了极大的灵活性。它允许经典统计推断以及机器学习灵感预测建模。 GPPM提供频繁的频繁和贝叶斯推论,无需诉诸马尔可夫链蒙特卡罗的近似,这使得这种方法精确且快速。 GPPMS使用内核语言定义,可以表达许多传统的纵向数据建模方法,例如线性结构方程模型,多级模型或状态空间模型,而且还可以是各种常用的机器学习方法。结果,GPPM独特地能够代表组合传统的参数纵向模型和非参数机学习模型的混合模型。在本文中,我们介绍了GPPM,并通过理论参数以及模拟和经验数据说明其实用程序。

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