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A modified weighted pairwise likelihood estimator for a class of random effects models

机译:一类随机效应模型的修正加权成对似然估计

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摘要

Composite likelihood estimation has been proposed in the literature for handling intractable likelihoods. In particular, pairwise likelihood estimation has been recently proposed to estimate models with latent variables and random effects that involve high dimensional integrals. Pairwise estimators are asymptotically consistent and normally distributed but not the most efficient among consistent estimators. Vasdekis et al. (Biostatistics 15:677-689,2014) proposed a weighted estimator that is found to be more efficient than the unweighted pairwise estimator produced by separate maximizations of pairwise likelihoods. In this paper, we propose a modification to that weighted estimator that leads to simpler computations and study its performance through simulations and a real application.
机译:在文献中已经提出了复合似然估计来处理难以处理的似然。特别地,最近提出了成对似然估计来估计具有涉及高维积分的潜在变量和随机效应的模型。成对估计量是渐近一致的,并且呈正态分布,但在一致估计量中并不是最有效的。 Vasdekis等。 (Biostatistics 15:677-689,2014)提出了一种加权估计器,该估计器比通过成对似然的单独最大化产生的未加权成对估计器更有效。在本文中,我们提出了对加权估计器的一种改进,可以简化计算,并通过仿真和实际应用来研究其性能。

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