Estimation of Parameters in Multiple Regression With Missing Covariates using a Modified First Order Regression Procedure

IF 0.2 4区 经济学 Q4 ECONOMICS
H. Toutenburg, V. K. Srivastava, Shalabh, C. Heumann
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引用次数: 3

Abstract

This paper considers the estimation of coefficients in a linear regression model with missing observations in the independent variables and introduces a modification of the standard first order regression method for imputation of missing values. The modification provides stochastic values for imputation. Asymptotic properties of the estimators for the regression coefficients arising from the proposed modification are derived when either both the number of complete observations and the number of missing values grow large or only the number of complete observations grows large and the number of missing observations stays fixed. Using these results, the proposed procedure is compared with two popular proceduresiaone which utilizes only the complete observations and the other which employs the standard first order regression imputation method for missing values. It is suggested that an elaborate simulation experiment will be helpful to evaluate the gain in efficiency especially in case of discrete regressor variables and to examine some other interesting issues like the impact of varying degree of multicollinearity in explanatory variables. Applications to some concrete data sets may also shed some light on these aspects. Some work on these lines is in progress and will be reported in a future article to follow.
用改进的一阶回归法估计缺失协变量的多元回归参数
本文研究了自变量中有缺失观测值的线性回归模型的系数估计问题,并对标准一阶回归方法进行了改进,用于缺失值的估计。修正后的算法提供了用于估算的随机值。当完全观测值的数量和缺失值的数量都变大,或者只有完整观测值的数量变大而缺失观测值的数量保持不变时,得到了由所提出的修正引起的回归系数估计量的渐近性质。利用这些结果,将所提出的方法与两种流行的方法进行了比较,一种方法只利用完整的观测值,另一种方法采用标准的一阶回归插值方法来处理缺失值。有人建议,一个详细的模拟实验将有助于评估效率的增益,特别是在离散回归变量的情况下,并检查一些其他有趣的问题,如解释变量中不同程度的多重共线性的影响。对一些具体数据集的应用程序也可能对这些方面有所启发。这些方面的一些工作正在进行中,将在后续的文章中进行报道。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
0.70
自引率
0.00%
发文量
0
期刊介绍: Annals of Economics and Finance (ISSN 1529-7373) sets the highest research standard for economics and finance in China. It publishes original theoretical and applied papers in all fields of economics, finance, and management. It also encourages an economic approach to political science, sociology, psychology, ethics, and history.
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