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A regression model for pooled data in a two-stage survey under informative sampling with application for detecting and estimating the presence of transgenic corn

机译:信息抽样下两阶段调查中汇总数据的回归模型,该模型可用于检测和估计转基因玉米的存在

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Group-testing regression methods are effective for estimating and classifying binary responses and can substantially reduce the number of required diagnostic tests. However, there is no appropriate methodology when the sampling process is complex and informative. In these cases, researchers often ignore stratification and weights that can severely bias the estimates of the population parameters. In this paper, we develop group-testing regression models for analysing two-stage surveys with unequal selection probabilities and informative sampling. Weights are incorporated into the likelihood function using the pseudo-likelihood approach. A simulation study demonstrates that the proposed model reduces the bias in estimation considerably compared to other methods that ignore the weights. Finally, we apply the model for estimating the presence of transgenic corn in Mexico and we give the SAS code used for the analysis.
机译:群体测试回归方法可有效地估计和分类二进制响应,并且可以大大减少所需的诊断测试数量。但是,当采样过程复杂且内容丰富时,没有合适的方法。在这些情况下,研究人员经常忽略分层和权重,这些分层和权重可能严重偏离总体参数的估计值。在本文中,我们开发了群体测试回归模型,用于分析具有不相等选择概率和信息量抽样的两阶段调查。使用伪似然法将权重合并到似然函数中。仿真研究表明,与其他忽略权重的方法相比,该模型大大降低了估计的偏差。最后,我们将模型应用于估计墨西哥中转基因玉米的存在,并给出用于分析的SAS代码。

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