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Diagnostics of multiple group influential observations for logistic regression models

机译:诊断对逻辑回归模型的多组影响观测

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摘要

In this paper, two new multiple influential observation detection methods, GCD.GSPR and mCD*, are introduced for logistic regression. The proposed diagnostic measures are compared with the generalized difference in fits (GDFFITS) and the generalized squared difference in beta (GSDFBETA), which are multiple influential diagnostics. The simulation study is conducted with one, two and five independent variable logistic regression models. The performance of the diagnostic measures is examined for a single contaminated independent variable for each model and in the case where all the independent variables are contaminated with certain contamination rates and intensity. In addition, the performance of the diagnostic measures is compared in terms of the correct identification rate and swamping rate via a frequently referred to data set in the literature.
机译:在本文中,引入了两个新的多重影响观察检测方法,GCD.GSPR和MCD *,用于逻辑回归。将所提出的诊断措施与β(GDFFITS)的广义差异进行比较,这是β(GSDFBETA)的广义平方差,这是多种影响力的诊断。仿真研究是用一个,两个和五个独立的可变逻辑回归模型进行的。检查诊断措施的性能对于每个模型的单个受污染的独立变量以及所有独立变量因某些污染速率和强度污染的情况而定。此外,通过经常提到文献中的数据集的频繁提到验证率和淋巴速率来比较诊断措施的性能。

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