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Handling nonresponse in surveys: analytic corrections compared with converting nonresponders.

机译:处理调查中的无答复:与转换无答复相比,分析更正。

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摘要

A large health survey was combined with a simulation study to contrast the reduction in bias achieved by double sampling versus two weighting methods based on propensity scores. The survey used a census of one New York county and double sampling in six others. Propensity scores were modeled as a logistic function of demographic variables and were used in conjunction with a random uniform variate to simulate response in the census. These data were used to estimate the prevalence of chronic disease in a population whose parameters were defined as values from the census. Significant (p < 0.0001) predictors in the logistic function included multiple (vs. single) occupancy (odds ratio (OR) = 1.3), bank card ownership (OR = 2.1), gender (OR = 1.5), home ownership (OR = 1.3), head of household's age (OR = 1.4), and income >Dollars 18,000 (OR = 0.8). The model likelihood ratio chi-square was significant (p < 0.0001), with the area under the receiver operating characteristic curve = 0.59. Double-sampling estimates were marginally closer to population values than those from either weighting method. However, the variance was also greater (p < 0.01). The reduction in bias for point estimation from double sampling may be more than offset by the increased variance associated with this method.
机译:大型健康调查与模拟研究相结合,对比了两次采样与两种基于倾向得分的加权方法所减少的偏差。该调查使用了一个纽约县的人口普查数据,另外六个国家则进行了两次抽样调查。倾向得分被建模为人口统计学变量的对数函数,并与随机统一变量一起用于模拟人口普查中的响应。这些数据用于估计人口中慢性病的患病率,其参数定义为人口普查中的值。逻辑函数中的重要预测变量(p <0.0001)包括多次(相对于单次)占用率(比值比(OR)= 1.3),银行卡所有权(OR = 2.1),性别(OR = 1.5),房屋所有权(OR = 1.3),户主年龄(OR = 1.4),收入>美元18,000(OR = 0.8)。模型似然比卡方显着(p <0.0001),接收器工作特性曲线下方的面积= 0.59。与任何一种加权方法相比,双抽样估计值都稍微接近总体值。但是,方差也更大(p <0.01)。与这种方法相关联的方差的增加,可能会使来自双重采样的点估计的偏差减少量大于抵消量。

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