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A solution to the problem of separation in logistic regression.

机译:Logistic回归中分离问题的解决方案。

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The phenomenon of separation or monotone likelihood is observed in the fitting process of a logistic model if the likelihood converges while at least one parameter estimate diverges to +/- infinity. Separation primarily occurs in small samples with several unbalanced and highly predictive risk factors. A procedure by Firth originally developed to reduce the bias of maximum likelihood estimates is shown to provide an ideal solution to separation. It produces finite parameter estimates by means of penalized maximum likelihood estimation. Corresponding Wald tests and confidence intervals are available but it is shown that penalized likelihood ratio tests and profile penalized likelihood confidence intervals are often preferable. The clear advantage of the procedure over previous options of analysis is impressively demonstrated by the statistical analysis of two cancer studies.
机译:如果在至少一个参数估计值趋于+/-无穷大的同时收敛,则在逻辑模型的拟合过程中会观察到分离现象或单调似然现象。分离主要发生在具有几个不平衡且具有高度预测风险因素的小样本中。 Firth最初开发的减少最大似然估计值偏差的程序可为分离提供理想的解决方案。它通过惩罚最大似然估计来产生有限参数估计。可以使用相应的Wald检验和置信区间,但事实表明,通常最好采用惩罚似然比检验和轮廓惩罚似然置信区间。两项癌症研究的统计分析令人印象深刻地证明了该程序相对于先前分析选项的明显优势。

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