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Markov Switching Copula Models for Longitudinal Data

机译:Markov切换Copula模型,用于纵向数据

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In this paper we present a novel Markov Switching generative model for continuous multivariate time series and longitudinal data based on Gaussian copula functions. We assume that the values of the multivariate time series at every time slice are sampled out of a joint probability distribution that is selected by the latent state. The use of Gaussian copula functions give the flexibility of individual marginals for each time series and a common dependence structure given by a correlation matrix. The transition matrix together with all the observation models are learned by means of Gibbs sampling. We also test the method both with synthetic and real data sets, and compare them with other usual techniques. Results show that models assuming normality in real data sets are not a good approach when marginals are not Gaussian, and they are outranked by our proposal.
机译:本文介绍了一种新的马尔可夫开关生成模型,用于基于高斯谱函数的连续多变量时间序列和纵向数据。我们假设在每次切片上的多变量时间序列的值被取样出由潜在状态选择的联合概率分布。使用高斯谱符的使用为每个时间序列和由相关矩阵给出的常见依赖结构提供了个体边缘的灵活性。通过GIBBS采样学习过渡矩阵与所有观察模型一起学习。我们还通过合成和实数据集测试该方法,并将它们与其他通常的技术进行比较。结果表明,当实际数据集中的正常性的模型不是一种很好的方法,当边缘不是高斯时,他们是由我们的建议脱颖而出的。

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