用参数法处理临界多重共线性

O. Maxwell, G. A. Osuji, Ibeakuzie Precious Onyedikachi, Chinelo Ijeoma Obi-Okpala, I. U. Chinedu, O. I. Frank
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引用次数: 2

摘要

在回归分析中,反应和解释变量之间的相关性是相对必要的,但解释变量之间的相关性是不希望的。本文重点介绍了处理关键多重共线性的五种方法,包括:偏最小二乘回归(PLSR),岭回归(RR),普通最小二乘回归(OLS),最小绝对收缩和选择算子(LASSO)回归以及主成分分析(PCA)。在大多数情况下,在样本量大于或等于考虑的水平(n>p)的情况下,对方法进行蒙特卡罗模拟比较,计算平均均方误差(AMSE)和明池信息准则(Akaike Information Criterion)值。结果表明,PCR在处理关键多重共线性问题时最优、最有效,在所有样本量和不同水平下,其AMSE和AIC值都最低。
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Handling Critical Multicollinearity Using Parametric Approach
In regression analysis, it is relatively necessary to have a correlation between the response and explanatory variables, but having correlations amongst explanatory variables is something undesired. This paper focuses on five methodologies for handling critical multicollinearity, they include: Partial Least Square Regression (PLSR), Ridge Regression (RR), Ordinary Least Square Regression (OLS), Least Absolute Shrinkage and Selector Operator (LASSO) Regression, and the Principal Component Analysis (PCA). Monte Carlo Simulations comparing the methods was carried out with the sample size greater than or equal to the levels (n>p) considered in most cases, the Average Mean Square Error (AMSE) and Akaike Information Criterion (AIC) values were computed. The result shows that PCR is the most superior and more efficient in handling critical multicollinearity problems, having the lowest AMSE and AIC values for all the sample sizes and different levels considered.
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