论文标题
线性面板数据模型的强大估计
Robust Estimation for Linear Panel Data Models
论文作者
论文摘要
在应用程序的不同领域中,包括但不限于行为,环境,医学科学和计量经济学,使用面板数据回归模型的使用已越来越流行,作为制定有意义的统计推断的一般框架。但是,当使用普通最小二乘方法(OLS)方法估计模型参数时,异常值的存在可能会通过产生偏见和效率低下的估计值来显着改变此类模型的充分性。在这项工作中,我们为具有固定和随机效果的线性面板数据模型提出了一个新的,加权的可能性的稳健估计程序。通过广泛的模拟研究以及对血压数据集的应用,已经说明了所提出的估计量的有限样本性能。我们的详尽研究表明,在存在异常值的情况下,提出的估计量显示出对传统方法的表现明显更好,并且当数据集中不存在异常值时,基于OLS的估计值会产生竞争性结果。
In different fields of applications including, but not limited to, behavioral, environmental, medical sciences and econometrics, the use of panel data regression models has become increasingly popular as a general framework for making meaningful statistical inferences. However, when the ordinary least squares (OLS) method is used to estimate the model parameters, presence of outliers may significantly alter the adequacy of such models by producing biased and inefficient estimates. In this work we propose a new, weighted likelihood based robust estimation procedure for linear panel data models with fixed and random effects. The finite sample performances of the proposed estimators have been illustrated through an extensive simulation study as well as with an application to blood pressure data set. Our thorough study demonstrates that the proposed estimators show significantly better performances over the traditional methods in the presence of outliers and produce competitive results to the OLS based estimates when no outliers are present in the data set.