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A comparative investigation of methods for logistic regression with separated or nearly separated data.

机译:使用分离或几乎分离的数据进行逻辑回归的方法的比较研究。

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In logistic regression analysis of small or sparse data sets, results obtained by classical maximum likelihood methods cannot be generally trusted. In such analyses it may even happen that the likelihood meets the convergence criteria while at least one parameter estimate diverges to +/-infinity. This situation has been termed 'separation', and it typically occurs whenever no events are observed in one of the two groups defined by a dichotomous covariate. More generally, separation is caused by a linear combination of continuous or dichotomous covariates that perfectly separates events from non-events. Separation implies infinite or zero maximum likelihood estimates of odds ratios, which are usually considered unrealistic. I provide some examples of separation and near-separation in clinical data sets and discuss some options to analyse such data, including exact logistic regression analysis and a penalized likelihood approach. Both methods supply finite point estimates in case of separation. Profile penalized likelihood confidence intervals for parameters show excellent behaviour in terms of coverage probability and provide higher power than exact confidence intervals. General advantages of the penalized likelihood approach are discussed.
机译:在对较小或稀疏数据集进行逻辑回归分析时,通常无法相信通过经典最大似然法获得的结果。在这样的分析中,甚至可能发生可能性满足收敛准则,而至少一个参数估计值趋于+/-无限大。这种情况被称为“分离”,通常在二分协变量定义的两组之一中未观察到任何事件时发生。更一般地,分离是由连续或二分协变量的线性组合引起的,该线性组合将事件与非事件完美地分开。分离意味着比值比的无穷大或零最大似然估计,通常认为这是不现实的。我提供了一些在临床数据集中分离和近似分离的示例,并讨论了分析此类数据的一些选项,包括精确的逻辑回归分析和惩罚似然法。在分离的情况下,两种方法都提供了有限点估计。参数的轮廓惩罚似然置信区间在覆盖概率方面显示出出色的行为,并且比精确的置信区间提供更高的功效。讨论了惩罚似然法的一般优势。

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