The panel data regression models have become one of the most widely applied statistical approaches in different fields of research, including social, behavioral, environmental sciences, and econometrics. However, traditional least-squares-based techniques frequently used for panel data models are vulnerable to the adverse effects of the data contamination or outlying observations that may result in biased and inefficient estimates and misleading statistical inference. In this study, we propose a minimum density power divergence estimation procedure for panel data regression models with random effects to achieve robustness against outliers. The robustness, as well as the asymptotic properties of the proposed estimator, are rigorously established. The finite-sample properties of the proposed method are investigated through an extensive simulation study and an application to climate data in Oman. Our results demonstrate that the proposed estimator exhibits improved performance over some traditional and robust methods in the presence of data contamination.
翻译:专门小组数据回归模型已成为不同研究领域,包括社会、行为、环境科学和计量经济学领域最广泛应用的统计方法之一,然而,通常用于专门小组数据模型的传统以最不平方为基础的技术很容易受到数据污染或外部观测的不利影响,从而可能导致偏差和低效率的估计以及误导性统计推理。在本研究中,我们提议对专门小组数据回归模型采用最小密度功率差异估计程序,这种模型具有随机效应,可实现对外部线的稳健性。拟议的估计仪的坚固性以及非现性性质得到了严格确立。通过广泛的模拟研究和对阿曼气候数据的应用,对拟议方法的有限抽样特性进行了调查。我们的结果表明,拟议的估计仪显示,在存在数据污染的情况下,某些传统和稳健方法的性能得到了提高。