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带有误分类和协变量调整的配对有序数据比较

Comparison of paired ordinal data with mis-classification and covariates adjustment

Journal of the Royal Statistical Society. Series C: Applied Statistics · 2024
被引 0
ABS 3

中文导读

针对配对有序数据,提出一种考虑误分类和协变量调整的估计与检验方法,利用部分验证数据估计误分类概率,并通过模拟和实际数据验证其有效性。

Abstract

Abstract In this paper, we develop an estimation and testing procedure for comparing matched-pair ordinal outcomes in studies with confounding factors. The classification method for the categories of ordinal outcomes that is accessible for all units may be prone to mis-classification, and thus another error-free classification method that can only be affordable for a fraction of the units are used, resulting in a dataset with partial validation. The distribution of categorical variables is modelled using correlated bivariate Gaussian latent variables, and the confounding factors are adjusted as covariates. The mis-classification of ordinal outcomes is addressed by estimating the mis-classification probabilities through the partial validation structure of the dataset. The mis-classification probabilities and the other parameters are estimated by a two-stage maximum likelihood estimator, and the difference between the matched-pair ordinal outcomes are assessed by a Wald test statistic. Simulation studies were conducted to investigate the accuracy of the estimates of the model parameters, and the type I error rates and power of the proposed testing procedure. The motivating dataset from the Garki Project was analysed to demonstrate the applicability of the proposed approach.

统计学计量经济学分类变量有序数据回归分析