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Rank-based ridge estimation in multiple linear regression

机译:多元线性回归中基于秩的岭估计

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摘要

Multicollinearity and model misspecification are frequently encountered problems in practice that produce undesirable effects on classical ordinary least squares (OLS) regression estimator. The ridge regression estimator is an important tool to reduce the effects of multicollinearity, but it is still sensitive to a model misspecification of error distribution. Although rank-based statistical inference has desirable robustness properties compared to the OLS procedures, it can be unstable in the presence of multicollinearity. This paper introduces a rank regression estimator for regression parameters and develops tests for general linear hypotheses in a multiple linear regression model. The proposed estimator and the tests have desirable robustness features against the multicollinearity and model misspecification of error distribution. Asymptotic behaviours of the proposed estimator and the test statistics are investigated. Real and simulated data sets are used to demonstrate the feasibility and the performance of the estimator and the tests.
机译:多重共线性和模型错误指定是实践中经常遇到的问题,会对经典的普通最小二乘(OLS)回归估计器产生不良影响。岭回归估计器是减少多重共线性影响的重要工具,但它仍然对误差分布的模型错误指定敏感。尽管与OLS程序相比,基于等级的统计推断具有理想的鲁棒性,但在存在多重共线性的情况下它可能不稳定。本文介绍了回归参数的秩回归估计量,并针对多元线性回归模型中的一般线性假设进行了检验。所提出的估计器和测试具有针对多重共线性和误差分布的模型错误指定的理想鲁棒性特征。研究了估计量的渐近行为和检验统计量。真实和模拟的数据集用于证明估计器和测试的可行性和性能。

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