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Bayesian weighted inference from surveys

机译:来自调查的贝叶斯加权推断

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摘要

Data from large surveys are often supplemented with sampling weights that are designed to reflect unequal probabilities of response and selection inherent in complex survey sampling methods. We propose two methods for Bayesian estimation of parametric models in a setting where the survey data and the weights are available, but where information on how the weights were constructed is unavailable. The first approach is to simply replace the likelihood with the pseudo likelihood in the formulation of Bayes theorem. This is proven to lead to a consistent estimator but also leads to credible intervals that suffer from systematic undercoverage. Our second approach involves using the weights to generate a representative sample which is integrated into a Markov chain Monte Carlo (MCMC) or other simulation algorithms designed to estimate the parameters of the model. In the extensive simulation studies, the latter methodology is shown to achieve performance comparable to the standard frequentist solution of pseudo maximum likelihood, with the added advantage of being applicable to models that require inference via MCMC. The methodology is demonstrated further by fitting a mixture of gamma densities to a sample of Australian household income.
机译:来自大型调查的数据通常补充采样权重,旨在反映复杂调查采样方法中固有的响应和选择的不等概率。我们为调查数据和权重可用的设置中提出了两种贝叶斯估计参数模型的方法,但是有关如何构建权重的信息不可用。第一种方法是简单地取代贝斯定理的制定中的伪可能性的可能性。证明这导致了一致的估计,但也导致可靠的间隔,遭受系统的核算。我们的第二种方法涉及使用重量来生成集成的代表性样本,该样本集成到Markov链蒙特卡罗(MCMC)或旨在估计模型参数的其他仿真算法中。在广泛的仿真研究中,后一种方法显示出可与伪最大可能性的标准频率解决方案相当的性能,其额外的优点是适用于通过MCMC推断的模型。通过将伽玛密度的混合物与澳大利亚家庭收入的样本进行了进一步证明了方法。

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