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Ordered response models

机译:有序响应模型

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摘要

We discuss regression models for ordered responses, such as ratings of bonds, schooling attainment, or measures of subjective well-being. Commonly used models in this context are the ordered logit and ordered probit regression models. They are based on an underlying latent model with single index function and constant thresholds. We argue that these approaches are overly restrictive and preclude a flexible estimation of the effect of regressors on the discrete outcome probabilities. For example, the signs of the marginal probability effects can only change once when moving from the smallest category to the largest one. We then discuss several alternative models that overcome these limitations. An application illustrates the benefit of these alternatives.
机译:我们讨论有序响应的回归模型,例如债券的等级,学业成绩或主观幸福感的测度。在这种情况下,常用的模型是有序logit和有序概率回归模型。它们基于具有单个索引函数和恒定阈值的潜在模型。我们认为,这些方法过于局限,无法灵活估计回归变量对离散结果概率的影响。例如,边际概率效应的符号在从最小类别转到最大类别时只能更改一次。然后,我们讨论克服这些限制的几种替代模型。一个应用程序说明了这些替代方案的好处。

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