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Regression models with ordered multiple categorical predictors

机译:有序多个类别预测变量的回归模型

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摘要

Ordered multiple categorical (MC) variable has been widely considered and studied as response variable, and few studies have carefully considered it as a predictor in linear regression. When doing this, the existence of some pseudo-categories may result in overfitting, and to detect those pseudo-categories by hypothesis test of all dummy variables might have low specificity. In this paper, we propose a transformation method of dummy variables for such ordered MC predictors, after which a model selection method combined with BIC will be elaborated. Theoretical consistency of our model selection method is established under some common assumptions. Both simulation studies and real data analysis of a medical survey indicate that our method provides good performance and is applicable to a wide range of biomedical research.
机译:有序多类别(MC)变量已被广泛考虑并作为响应变量进行了研究,很少有研究仔细地将其视为线性回归的预测变量。这样做时,某些伪类别的存在可能会导致过度拟合,并且通过所有虚拟变量的假设检验来检测那些伪类别的特异性可能较低。在本文中,我们提出了一种针对此类有序MC预测变量的虚拟变量的转换方法,然后将阐述与BIC组合的模型选择方法。我们的模型选择方法的理论一致性是在一些共同的假设下建立的。仿真研究和医学调查的真实数据分析均表明,我们的方法具有良好的性能,可应用于广泛的生物医学研究。

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