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Weighted pairwise likelihood estimation for a general class of random effects models

机译:一般类别的随机效应模型的加权成对似然估计

摘要

Models with random effects/latent variables are widely used for capturing unobserved heterogeneity in multilevel/hierarchical data and account for associations in multivariate data. The estimation of those models becomes cumbersome as the number of latent variables increases due to high-dimensional integrations involved. Composite likelihood is a pseudo-likelihood that combines lower-order marginal or conditional densities such as univariate and/or bivariate; it has been proposed in the literature as an alternative to full maximum likelihood estimation. We propose a weighted pairwise likelihood estimator based on estimates obtained from separate maximizations of marginal pairwise likelihoods. The derived weights minimize the total variance of the estimated parameters. The proposed weighted estimator is found to be more efficient than the one that assumes all weights to be equal. The methodology is applied to a multivariate growth model for binary outcomes in the analysis of four indicators of schistosomiasis before and after drug administration.
机译:具有随机效应/潜在变量的模型被广泛用于捕获多级/分层数据中未观察到的异质性,并考虑了多变量数据中的关联。随着潜在变量的数量由于涉及高维积分而增加,这些模型的估计变得很麻烦。复合似然是一种伪似然,它结合了低阶边际或条件密度,例如单变量和/或双变量。在文献中已经提出将其作为完全最大似然估计的替代方法。我们基于从边际成对可能性的单独最大化中获得的估计值,提出了加权成对似然估计器。得出的权重使估算参数的总方差最小。发现所提出的加权估计器比假定所有权重相等的估计器更有效。该方法应用于药物治疗前后血吸虫病四个指标分析的二元结果多元增长模型。

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