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首页> 外文期刊>Journal of Chemometrics >A Liu estimator for the beta regression model and its application to chemical data
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A Liu estimator for the beta regression model and its application to chemical data

机译:刘估计β回归模型及其对化学数据的应用

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Beta regression has become a popular tool for performing regression analysis on chemical, environmental, or biological data in which the dependent variable is restricted to the interval [0, 1]. For the first time, in this paper, we propose a Liu estimator for the beta regression model with fixed dispersion parameter that may be used in several realistic situations when the degree of correlation among the regressors differs. First, we show analytically that the new estimator outperforms the maximum likelihood estimator (MLE) using the mean square error (MSE) criteria. Second, using a 'simulation study, we investigate the properties in finite samples of six different suggested estimators of the shrinkage parameter and compare it with the MLE. The simulation results indicate that in the presence of multicollinearity, the Liu estimator outperforms the MLE uniformly. Finally, using an empirical application on chemical data, we show the benefit of the new approach to applied researchers.
机译:Beta回归已成为对化学,环境或生物数据进行回归分析的流行工具,其中所属变量仅限于间隔[0,1]。 在本文中,我们提出了一种具有固定色散参数的Beta回归模型的Liu估计器,当回归器之间的相关程度不同时,可以在若干现实情况中使用。 首先,我们在分析上显示新的估计器使用均方误差(MSE)标准优于最大似然估计器(MLE)。 其次,使用“模拟研究”,我们研究了六个不同建议估计的有限样本中的收缩参数的特性,并将其与MLE进行比较。 仿真结果表明,在存在多元性,刘估计器均匀地优于MLE。 最后,使用对化学数据的实证应用,我们展示了新方法应用研究人员的益处。

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