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On the Restricted Poisson Ridge Regression Estimator

机译:在受限制的泊松岭回归估算器上

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For modeling count data, the Poisson regression model is widely used in which the response variable takes non-negative integer values. However, the presence of strong correlation between the explanatory variables causes the problem of multicollinearity. Due to multicollinearity, the variance of the maximum likelihood estimator (MLE) will be inflated causing the parameters estimation to become unstable. Multicollinearity can be tackled by using biased estimators such as the ridge estimator in order to minimize the estimated variance of the regression coefficients. An alternative approach is to specify exact linear restrictions on the parameters in addition to regression model. In this paper, the restricted Poisson ridge regression estimator (RPRRE) is suggested to handle multicollinearity in Poisson regression model with exact linear restrictions on the parameters. In addition, the conditions of superiority of the suggested estimator in comparison to some existing estimators are discussed based on the mean squared error (MSE) matrix criterion. Moreover, a simulation study and a real data application are provided to illustrate the theoretical results. The results indicate that the suggested estimator, RPRRE, outperforms the other existing estimators in terms of scalar mean squared error (SMSE). Therefore, it is recommended to use the RPRRE for the Poisson regression model when the problem of multicollinearity is present.
机译:对于建模计数数据,泊松回归模型广泛使用,其中响应变量采用非负整数值。然而,解释性变量之间存在强烈相关性导致多型头子的问题。由于多色性,最大似然估计器(MLE)的方差将膨胀,导致参数估计变得不稳定。可以通过使用诸如脊估计器的偏置估计器来解决多色性,以最小化回归系数的估计方差。另一种方法是除回归模型之外,还指定对参数的精确线性限制。在本文中,建议限制泊松岭回归估计估计器(RPRRE)以处理泊松回归模型中的多型性,对参数的精确线性限制。另外,基于平均平方误差(MSE)矩阵标准,讨论了与某些现有估计的建议估计器的优越性的条件。此外,提供了模拟研究和实际数据应用来说明理论结果。结果表明,建议的估计器RPRRE在标量均方误差(SMSE)方面胜过其他现有估计。因此,当存在多重形性问题时建议使用泊松回归模型的RPRRE。

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