Beta regression models are employed to model continuous response variables in the unit interval, like rates, percentages, or proportions. Their applications rise in several areas, such as medicine, environment research, finance, and natural sciences. The maximum likelihood estimation is widely used to make inferences for the parameters. Nonetheless, it is well-known that the maximum likelihood-based inference suffers from the lack of robustness in the presence of outliers. Such a case can bring severe bias and misleading conclusions. Recently, robust estimators for beta regression models were presented in the literature. However, these estimators require non-trivial restrictions in the parameter space, which limit their application. This paper develops new robust estimators that overcome this drawback. Their asymptotic and robustness properties are studied, and robust Wald-type tests are introduced. Simulation results evidence the merits of the new robust estimators. Inference and diagnostics using the new estimators are illustrated in an application to health insurance coverage data.
翻译:贝塔回归模型用于在单位间隔中模拟连续响应变量,例如比率、百分比或比例;其应用在医学、环境研究、金融学和自然科学等若干领域的应用增加;最大可能性估算被广泛用来推断参数;然而,众所周知,基于最大可能性的推断因外部线缺乏稳健性而产生。这种案例可能产生严重偏差和误导性结论。最近,文献中展示了有关贝塔回归模型的强有力估计符;然而,这些估计符要求在参数空间中设置非三边限制,从而限制其应用。本文开发了克服这一缺陷的新的稳健估计符;研究了它们的无稳健性和稳健性特性,并引入了稳健的沃尔德型测试。模拟结果证明了新的稳健的估算符的优点。在对健康保险覆盖数据的应用中演示了使用新估计符的推断和诊断。