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Identifiability and bias reduction in the skew-probit model for a binary response

机译:二进制响应的偏斜概率模型中的可识别性和偏差

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The skew-probit link function is one of the popular choices for modelling the success probability of a binary variable with regard to covariates. This link deviates from the probit link function in terms of a flexible skewness parameter. For this flexible link, the identifiability of the parameters is investigated. Next, to reduce the bias of the maximum likelihood estimator of the skew-probit model we propose to use the penalized likelihood approach. We consider three different penalty functions, and compare them via extensive simulation studies. Based on the simulation results we make some practical recommendations. For the illustration purpose, we analyse a real dataset on heart-disease.
机译:Skew概率链接功能是用于在协变量方面建模二元变量的成功概率的流行选择之一。此链接根据灵活的Skewness参数偏离探测链路功能。对于这种灵活的链接,研究了参数的可识别性。接下来,为了减少偏斜概率模型的最大似然估计器的偏差,我们建议使用惩罚的似然方法。我们考虑三个不同的惩罚功能,并通过广泛的模拟研究进行比较。根据模拟结果,我们做出了一些实用的建议。为了说明目的,我们分析了心脏病的真实数据集。

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