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首页> 外文期刊>Journal of Econometrics >Parametric Links for Binary Choice Models: A Fisherian-Bayesian Colloquy.
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Parametric Links for Binary Choice Models: A Fisherian-Bayesian Colloquy.

机译:二元选择模型的参数链接:Fisher-Bayesian对话。

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摘要

The familiar logit and probit models provide convenient settings for many binary response applications, but a larger class of link functions may be occasionally desirable. Two parametric families of link functions are investigated: the Gosset link based on the Student t latent variable model with the degrees of freedom parameter controlling the tail behavior, and the Pregibon link based on the (generalized) Tukey lambda family, with two shape parameters controlling skewness and tail behavior. Both Bayesian and maximum likelihood methods for estimation and inference are explored, compared, and contrasted. In applications, like the propensity score matching problem discussed below, where it is critical to have accurate estimates of the conditional probabilities, we find that misspecification of the link function can create serious bias. Bayesian point estimation via MCMC performs quite competitively with MLE methods; however nominal coverage of Bayes credible regions is somewhat more problematic.
机译:熟悉的logit和probit模型为许多二进制响应应用程序提供了方便的设置,但是偶尔需要更大类的链接功能。研究了链接函数的两个参数族:基于自由度参数控制尾部行为的Student t潜变量模型的Gosset链接,以及基于(通用)Tukey lambda族且具有两个形状参数控制的Pregibon链接偏斜和尾巴行为。探索,比较和对比了贝叶斯和最大似然估计和推论方法。在应用程序中,例如下面讨论的倾向得分匹配问题,对条件概率进行准确估计非常关键,我们发现链接函数的错误指定会产生严重的偏差。通过MCMC进行贝叶斯点估计与MLE方法相比具有相当的竞争力。但是,贝叶斯可信区域的名义覆盖范围存在一些问题。

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