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首页> 外文期刊>hacettepe journal of mathematics and statistics >Robust model selection criteria for robust S and LTS estimators
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Robust model selection criteria for robust S and LTS estimators

机译:稳健的S和LTS估计量的稳健模型选择标准

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摘要

Outliers and multi-collinearity often have large influence in the model/variable selection process in linear regression analysis. To investigate this combined problem of multi-collinearity and outliers, we studied and compared Liu-type S (liuS-estimators) and Liu-type Least Trimmed Squares (liuLTS) estimators as robust model selection criteria. Therefore, the main goal of this study is to select subsets of independent variables which explain dependent variables in the presence of multi-collinearity, outliers and possible departures from the normality assumption of the error distribution in regression analysis using these models.
机译:离群值和多重共线性通常在线性回归分析的模型/变量选择过程中具有很大的影响。为了研究此多重共线性和离群值的组合问题,我们研究并比较了Liu型S(liuS估计量)和Liu型最小二乘平方(liuLTS)估计量作为健壮的模型选择标准。因此,本研究的主要目标是选择独立变量的子集,这些子集在存在多重共线性,离群值和可能偏离使用这些模型进行回归分析的误差分布的正态假设的情况下解释因变量。

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