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使用准经验残差分布函数评估离散结果回归模型

Assessment of Regression Models With Discrete Outcomes Using Quasi-Empirical Residual Distribution Functions

Journal of Computational and Graphical Statistics · 2021
被引 3
ABS 3

中文导读

针对离散结果回归模型评估难题,提出一种准经验残差分布函数,无需添加噪声,在连续协变量存在时渐近收敛于恒等函数,模拟显示优于常用残差。

Abstract

Making informed decisions about model adequacy has been an outstanding issue for regression models with discrete outcomes. Standard assessment tools for such outcomes (e.g. deviance residuals) often show a large discrepancy from the hypothesized pattern even under the true model and are not informative especially when data are highly discrete (e.g. binary). To fill this gap, we propose a quasi-empirical residual distribution function for general discrete (e.g. ordinal and count) outcomes that serves as an alternative to the empirical Cox-Snell residual distribution function. The assessment tool we propose is a principled approach and does not require injecting noise into the data. When at least one continuous covariate is available, we show asymptotically that the proposed function converges uniformly to the identity function under the correctly specified model, even with highly discrete outcomes. Through simulation studies, we demonstrate empirically that the proposed quasi-empirical residual distribution function outperforms commonly used residuals for various model assessment tasks, since it is close to the hypothesized pattern under the true model and significantly departs from this pattern under model misspecification, and is thus an effective assessment tool.

回归分析模型评估离散数据残差分析