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Modelling bias in combining small area prevalence estimates from multiple surveys

机译:结合来自多个调查的小区域患病率估计值的模型偏见

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摘要

Combining information from multiple surveys can improve the quality of small area estimates. Customary approaches, such as the multiple-frame and statistical matching methods, require individual level data, whereas in practice often only multiple aggregate estimates are available. Commercial surveys usually produce such estimates without clear description of the methodology that is used. In this context, bias modelling is crucial, and we propose a series of Bayesian hierarchical models which allow for additive biases. Some of these models can also be fitted in a classical context, by using a mixed effects framework. We apply these methods to obtain estimates of smoking prevalence in local authorities across the east of England from seven surveys. All the surveys provide smoking prevalence estimates and confidence intervals at the local authority level, but they vary by time, sample size and transparency of methodology. Our models adjust for the biases in commercial surveys but incorporate information from all the sources to provide more accurate and precise estimates.
机译:合并来自多个调查的信息可以提高小面积估算的质量。常规方法(例如多框架和统计匹配方法)需要各个级别的数据,而在实践中,通常只有多个汇总估算值可用。商业调查通常会产生这样的估计,而没有明确说明所使用的方法。在这种情况下,偏差建模至关重要,我们提出了一系列允许加性偏差的贝叶斯层次模型。通过使用混合效果框架,也可以在经典环境中拟合其中一些模型。我们应用这些方法从七个调查中获得了英格兰东部地区地方当局吸烟率的估计值。所有调查都提供了地方当局一级的吸烟流行率估计值和置信区间,但它们随时间,样本量和方法的透明性而变化。我们的模型针对商业调查中的偏差进行了调整,但结合了来自所有来源的信息以提供更准确准确的估计。

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