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Joint distribution and marginal distribution methods for checking assumptions of generalized linear model

机译:检查广义线性模型假设的联合分布与边缘分布方法

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摘要

In this article, we consider the model diagnostic plot and test of the generalized linear model. There exist several commonly used plotting methods and tests for checking the regression model assumptions. However, the existing plots and tests require certain constraints on the joint cumulative distribution function of the response variable Y and the covariate Z and thus are invalid when the real data set does not satisfy those constraints. In particular, in the latter case, the p-values provided by these tests are false. In this article, we propose a new method to check the model assumptions. This method compares two estimators of the marginal distribution of Y (or the joint distribution of (Y, Z)): one is the non-parametric maximum likelihood estimator and the other is an estimator based on the null hypothesis. This method is called the marginal distribution (MD) method or the joint distribution (JD) method. Their asymptotic properties are studied. The simulation results suggest both the diagnostic plots and the hypothesis tests using the new methods provide satisfactory results and the JD method is always consistent even when the existing methods fail.
机译:在本文中,我们考虑了广义线性模型的模型诊断图和测试。存在几种常用的绘图方法和测试,用于检查回归模型假设。然而,现有的绘图和测试需要对响应变量Y的关节累积分布函数以及协变Z的某些约束,因此当真实数据集不满足这些约束时无效。特别地,在后一种情况下,这些测试提供的p值是假的。在本文中,我们提出了一种新方法来检查模型假设。该方法比较了y的边际分布的两个估计(或(y,z)的关节分布):一个是非参数最大似然估计器,另一个是基于空假设的估计器。该方法称为边缘分布(MD)方法或联合分布(JD)方法。他们研究了它们的渐近性质。仿真结果表明,使用新方法的诊断图和假设测试都提供了令人满意的结果,即使现有方法失败,JD方法也始终一致。

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