School of Statistics, University of International Business and Economics, Beijing, P. R. China.
Department of Epidemiology, School of Public Health and Tropical Medicine, Tulane University, New Orleans, LA, USA.
Biom J. 2021 Jan;63(1):59-80. doi: 10.1002/bimj.202000028. Epub 2020 Sep 23.
Binomial regression models are commonly applied to proportion data such as those relating to the mortality and infection rates of diseases. However, it is often the case that the responses may exhibit excessive zeros; in such cases a zero-inflated binomial (ZIB) regression model can be applied instead. In practice, it is essential to test if there are excessive zeros in the outcome to help choose an appropriate model. The binomial models can yield biased inference if there are excessive zeros, while ZIB models may be unnecessarily complex and hard to interpret, and even face convergence issues, if there are no excessive zeros. In this paper, we develop a new test for testing zero inflation in binomial regression models by directly comparing the amount of observed zeros with what would be expected under the binomial regression model. A closed form of the test statistic, as well as the asymptotic properties of the test, is derived based on estimating equations. Our systematic simulation studies show that the new test performs very well in most cases, and outperforms the classical Wald, likelihood ratio, and score tests, especially in controlling type I errors. Two real data examples are also included for illustrative purpose.
二项回归模型通常应用于比例数据,例如与疾病的死亡率和感染率相关的数据。然而,在这种情况下,响应可能会出现过多的零值;在这种情况下,可以应用零膨胀二项式 (ZIB) 回归模型。在实践中,测试结果中是否存在过多的零值对于选择合适的模型至关重要。如果存在过多的零值,二项式模型可能会产生有偏的推断,而 ZIB 模型如果不存在过多的零值,则可能过于复杂且难以解释,甚至会面临收敛问题。在本文中,我们通过直接比较二项式回归模型中观察到的零值数量与该模型下的预期零值数量,开发了一种用于测试二项式回归模型中零膨胀的新检验方法。基于估计方程,推导出了检验统计量的闭式形式以及检验的渐近性质。我们的系统模拟研究表明,在大多数情况下,新检验的性能非常好,并且优于经典的 Wald、似然比和 score 检验,尤其是在控制第一类错误方面。为了说明问题,还包括了两个真实数据示例。