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Separation in Logistic Regression: Causes, Consequences, and Control

机译:物流回归分离:原因,后果和控制

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摘要

Separation is encountered in regression models with a discrete outcome (such as logistic regression) where the covariates perfectly predict the outcome. It is most frequent under the same conditions that lead to small-sample and sparse-data bias, such as presence of a rare outcome, rare exposures, highly correlated covariates, or covariates with strong effects. In theory, separation will produce infinite estimates for some coefficients. In practice, however, separation may be unnoticed or mishandled because of software limits in recognizing and handling the problem and in notifying the user. We discuss causes of separation in logistic regression and describe how common software packages deal with it. We then describe methods that remove separation, focusing on the same penalized-likelihood techniques used to address more general sparse-data problems. These methods improve accuracy, avoid software problems, and allow interpretation as Bayesian analyses with weakly informative priors. We discuss likelihood penalties, including some that can be implemented easily with any software package, and their relative advantages and disadvantages. We provide an illustration of ideas and methods using data from a case-control study of contraceptive practices and urinary tract infection.
机译:在回归模型中遇到分离,具有离散的结果(例如逻辑回归),协变者完全预测结果。它在相同的条件下最常见的是导致小样本和稀疏数据偏差,例如存在罕见的结果,稀有暴露,高度相关的协变量,或具有强烈影响的协变量。理论上,分离将产生一些系数的无限估计。然而,在实践中,由于在识别和处理问题和通知用户时,可以不受注意力或误操作地被忽略或误操作。我们讨论了逻辑回归中分离的原因,并描述了常见的软件包如何处理它。然后,我们描述了去除分离的方法,专注于用于解决更多普通稀疏数据问题的相同惩罚似然技术。这些方法提高了准确性,避免了软件问题,并允许解释为贝叶斯分析与弱富有信息的前瞻统一。我们讨论了可能性的惩罚,包括一些可以使用任何软件包轻易实施的一些人,以及它们的相对优势和缺点。我们提供了使用来自对避孕实践和尿路感染的病例对照研究的数据的思想和方法的插图。

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