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Latent variable models for ordinal data by using the adaptive quadrature approximation

机译:使用自适应正交逼近的序数数据潜在变量模型

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Latent variable models for ordinal data represent a useful tool in different fields of research in which the constructs of interest are not directly observable so that one or more latent variables are required to reduce the complexity of the data. In these cases problems related to the integration of the likelihood function of the model can arise. Indeed analytical solutions do not exist and in presence of several latent variables the most used classical numerical approximation, the Gauss Hermite quadrature, cannot be applied since it requires several quadrature points per dimension in order to obtain quite accurate estimates and hence the computational effort becomes not feasible. Alternative solutions have been proposed in the literature, like the Laplace approximation and the adaptive quadrature. Different studies demonstrated the superiority of the latter method particularly in presence of categorical data. In this work we present a simulation study for evaluating the performance of the adaptive quadrature approximation for a general class of latent variable models for ordinal data under different conditions of study. A real data example is also illustrated.
机译:序数数据的潜在变量模型代表了在不同研究领域中的有用工具,在这些研究领域中,无法直接观察到感兴趣的结构,因此需要一个或多个潜在变量来降低数据的复杂性。在这些情况下,可能会出现与模型似然函数的积分有关的问题。确实不存在解析解,并且在存在多个潜在变量的情况下,无法应用最常用的经典数值逼近法-高斯Hermite正交,因为它需要每个维数个正交点才能获得相当准确的估计,因此计算工作变得不那么困难。可行。文献中已经提出了替代解决方案,例如拉普拉斯逼近和自适应正交。不同的研究证明了后一种方法的优越性,特别是在存在分类数据的情况下。在这项工作中,我们提供了一个仿真研究,用于评估在不同研究条件下序数数据的一类通用潜在变量模型的自适应正交逼近的性能。还说明了一个真实的数据示例。

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