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Approximate likelihood inference in generalized linear latent variable models based on the dimension-wise quadrature

机译:基于维数正交的广义线性潜在变量模型中的近似似然推断

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摘要

textabstractWe propose a new method to perform approximate likelihood inference in latent variable models. Our approach provides an approximation of the integrals involved in the likelihood function through a reduction of their dimension that makes the computation feasible in situations in which classical and adaptive quadrature based methods are not applicable. We derive new theoretical results on the accuracy of the obtained estimators. We show that the proposed approximation outperforms several existing methods in simulations, and it can be successfully applied in presence of multidimensional longitudinal data when standard techniques are not applicable or feasible.
机译:我们提出了一种在潜在变量模型中执行近似似然推断的新方法。我们的方法通过减小维数来减小似然函数中涉及的积分,从而使计算在基于经典和自适应正交方法不适用的情况下可行。我们得出有关所获得估计量准确性的新理论结果。我们表明,所提出的逼近方法在模拟中的表现优于几种现有方法,并且当标准技术不适用或不可行时,可以在多维纵向数据存在的情况下成功应用该逼近方法。

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