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首页> 外文期刊>Journal of applied mathematics >Working with Missing Data: Imputation of Nonresponse Items in Categorical Survey Data with a Non-Monotone Missing Pattern
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Working with Missing Data: Imputation of Nonresponse Items in Categorical Survey Data with a Non-Monotone Missing Pattern

机译:处理缺失数据:在具有非单调缺失模式的分类调查数据中插补未答复项

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摘要

The imputation of missing data is often a crucial step in the analysis of survey data. This study reviews typical problems with missing data and discusses a method for the imputation of missing survey data with a large number of categorical variables which do not have a monotone missing pattern. We develop a method for constructing a monotone missing pattern that allows for imputation of categorical data in data sets with a large number of variables using a model-based MCMC approach. We report the results of imputing the missing data from a case study, using educational, sociopsychological, and socioeconomic data from the National Latino and Asian American Study (NLAAS). We report the results of multiply imputed data on a substantive logistic regression analysis predicting socioeconomic success from several educational, sociopsychological, and familial variables. We compare the results of conducting inference using a single imputed data set to those using a combined test over several imputations. Findings indicate that, for all variables in the model, all of the single tests were consistent with the combined test.
机译:估算缺失数据通常是分析调查数据的关键步骤。这项研究回顾了缺失数据的典型问题,并讨论了一种归因于缺失大量具有单调缺失模式的分类变量的调查数据的方法。我们开发了一种用于构造单调缺失模式的方法,该方法允许使用基于模型的MCMC方法在具有大量变量的数据集中插入分类数据。我们使用全国拉丁裔和亚裔美国人研究(NLAAS)的教育,社会心理学和社会经济数据,报告了从案例研究中估算缺失数据的结果。我们在基于逻辑回归分析的实质性逻辑回归分析中报告了多个估算数据的结果,该分析从多个教育,社会心理学和家庭变量预测了社会经济成功。我们将使用单个估算数据集进行推理的结果与对多个估算结果进行组合测试的结果进行比较。结果表明,对于模型中的所有变量,所有单个测试均与组合测试一致。

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