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On the asymptotic distribution of Cook's distance in logistic regression models

机译:Logistic回归模型中Cook距离的渐近分布

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It sometimes occurs that one or more components of the data exert a disproportionate influence on the model estimation. We need a reliable tool for identifying such troublesome cases in order to decide either eliminate from the sample, when the data collect was badly realized, or otherwise take care on the use of the model because the results could be affected by such components. Since a measure for detecting influential cases in linear regression setting was proposed by Cook [Detection of influential observations in linear regression, Technometrics 19 (1977), pp. 15-18.], apart from the same measure for other models, several new measures have been suggested as single-case diagnostics. For most of them some cutoff values have been recommended (see [D.A. Belsley, E. Kuh, and R.E. Welsch, Regression Diagnostics: Identifying Influential Data and Sources of Collinearity, 2nd ed., John Wiley & Sons, New York, Chichester, Brisban, (2004).], for instance), however the lack of a quantile type cutoff for Cook's statistics has induced the analyst to deal only with index plots as worthy diagnostic tools. Focussed on logistic regression, the aim of this paper is to provide the asymptotic distribution of Cook's distance in order to look for a meaningful cutoff point for detecting influential and leverage observations.
机译:有时会出现数据的一个或多个组成部分对模型估计产生不成比例的影响的情况。我们需要一种可靠的工具来识别此类麻烦的情况,以便确定从样本中消除,无法正确收集数据的时间,还是要谨慎使用模型,因为结果可能会受到此类组件的影响。自从Cook提出了一种用于检测线性回归环境中有影响的案例的方法[线性回归中的影响观测的检测,Technometrics 19(1977),第15-18页]。已被建议作为单例诊断。对于其中的大多数,建议使用一些临界值(请参见[DA Belsley,E. Kuh和RE Welsch,回归诊断:确定共线性的影响数据和来源,第二版,John Wiley&Sons,纽约,奇切斯特,布里斯班(例如,(2004年)。),但是由于Cook的统计数据缺乏分位数类型的临界值,导致分析师仅将指数图作为有价值的诊断工具进行处理。着重于逻辑回归,本文的目的是提供库克距离的渐近分布,以便寻找有意义的临界点来检测影响力和杠杆作用的观察结果。

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