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Using the jackknife for estimation in log link Bernoulli regression models

机译:在对数链接伯努利回归模型中使用折刀进行估计

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摘要

Bernoulli (or binomial) regression using a generalized linear model with a log link function, where the exponentiated regression parameters have interpretation as relative risks, is often more appropriate than logistic regression for prospective studies with common outcomes. In particular, many researchers regard relative risks to be more intuitively interpretable than odds ratios. However, for the log link, when the outcome is very prevalent, the likelihood may not have a unique maximum. To circumvent this problem, a ‘COPY method’ has been proposed, which is equivalent to creating for each subject an additional observation with the same covariates except the response variable has the outcome values interchanged (1’s changed to 0’s and 0’s changed to 1’s). The original response is given weight close to 1, while the new observation is given a positive weight close to 0; this approach always leads to convergence of the maximum likelihood algorithm, except for problems with convergence due to multicollinearity among covariates. Even though this method produces a unique maximum, when the outcome is very prevalent, and/or the sample size is relatively small, the COPY method can yield biased estimates. Here, we propose using the jackknife as a bias-reduction approach for the COPY method. The proposed method is motivated by a study of patients undergoing colorectal cancer surgery.
机译:对于具有共同结局的前瞻性研究,使用具有对数链接函数的广义线性模型进行伯努利(或二项式)回归(对指数回归参数解释为相对风险)通常比逻辑回归更合适。特别是,许多研究人员认为相对风险比优势比更直观地解释。但是,对于日志链接,当结果非常普遍时,可能性可能没有唯一的最大值。为了解决这个问题,提出了一种“复制方法”,等效于为每个主题创建一个具有相同协变量的附加观察值,只是响应变量的结果值互换了(1更改为0,0更改为1)。原始响应的权重接近1,而新的观测值的正权重接近0;这种方法总是导致最大似然算法的收敛,除了协变量之间的多重共线性引起的收敛问题。即使此方法产生唯一的最大值,但当结果非常普遍和/或样本量相对较小时,COPY方法仍会产生有偏差的估计。在这里,我们建议使用折刀作为COPY方法的减少偏差的方法。所提出的方法是通过对接受结直肠癌手术的患者进行研究而激发的。

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