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A global optimisation approach to range-restricted survey calibration

机译:范围受限的调查标定的全局优化方法

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摘要

Survey calibration methods modify minimally sample weights to satisfy domain-level benchmark constraints (BC), e.g. census totals. This allows exploitation of auxiliary information to improve the representativeness of sample data (addressing coverage limitations, non-response) and the quality of sample-based estimates of population parameters. Calibration methods may fail with samples presenting small/zero counts for some benchmark groups or when range restrictions (RR), such as positivity, are imposed to avoid unrealistic or extreme weights. User-defined modifications of BC/RR performed after encountering non-convergence allow little control on the solution, and penalisation approaches modelling infeasibility may not guarantee convergence. Paradoxically, this has led to underuse in calibration of highly disaggregated information, when available. We present an always-convergent flexible two-step global optimisation (GO) survey calibration approach. The feasibility of the calibration problem is assessed, and automatically controlled minimum errors in BC or changes in RR are allowed to guarantee convergence in advance, while preserving the good properties of calibration estimators. Modelling alternatives under different scenarios using various error/change and distance measures are formulated and discussed. The GO approach is validated by calibrating the weights of the 2012 Health Survey for England to a fine age-gender-region cross-tabulation(378 counts) from the 2011 Census in England and Wales.
机译:调查校准方法会最小化样本权重,以满足域级别的基准约束(BC),例如人口普查总数。这允许利用辅助信息来提高样本数据的代表性(解决覆盖范围限制,无响应)和基于样本的总体参数估计值的质量。校准方法可能会因某些基准组的样本计数少/为零或为了避免不切实际或极端的加权而施加范围限制(RR)(例如阳性)时可能会失败。遇到不收敛之后,对用户定义的BC / RR进行的修改几乎无法控制解决方案,并且惩罚方法建模不可行可能无法保证收敛。矛盾的是,这导致在高度细分的信息(如果可用)的校准中使用不足。我们提出了一种始终收敛的灵活的两步全局优化(GO)调查校准方法。评估校准问题的可行性,并允许自动控制BC的最小误差或RR的变化,以确保事先收敛,同时保留校准估计器的良好属性。提出并讨论了使用各种误差/变化和距离度量在不同情况下建模的备选方案。 GO方法通过将2012年英国健康调查的权重校准为2011年英格兰和威尔士人口普查中年龄,性别和地区之间的细微交叉表(378个计数)的方式得到了验证。

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