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Journal ArticleDOI

A caution regarding rules of thumb for variance inflation factors.

Robert M. O'Brien
- 13 Mar 2007 - 
- Vol. 41, Iss: 5, pp 673-690
TLDR
In this article, the authors examined the effect of the variance inflation factor (VIF) on the results of regression analyses, and found that threshold values of the VIF need to be evaluated in the context of several other factors that influence the variance of regression coefficients.
Abstract
The Variance Inflation Factor (VIF) and tolerance are both widely used measures of the degree of multi-collinearity of the ith independent variable with the other independent variables in a regression model. Unfortunately, several rules of thumb – most commonly the rule of 10 – associated with VIF are regarded by many practitioners as a sign of severe or serious multi-collinearity (this rule appears in both scholarly articles and advanced statistical textbooks). When VIF reaches these threshold values researchers often attempt to reduce the collinearity by eliminating one or more variables from their analysis; using Ridge Regression to analyze their data; or combining two or more independent variables into a single index. These techniques for curing problems associated with multi-collinearity can create problems more serious than those they solve. Because of this, we examine these rules of thumb and find that threshold values of the VIF (and tolerance) need to be evaluated in the context of several other factors that influence the variance of regression coefficients. Values of the VIF of 10, 20, 40, or even higher do not, by themselves, discount the results of regression analyses, call for the elimination of one or more independent variables from the analysis, suggest the use of ridge regression, or require combining of independent variable into a single index.

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Citations
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References
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Journal ArticleDOI

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Regression Diagnostics: Identifying Influential Data and Sources of Collinearity

TL;DR: In this article, the authors present a method for detecting and assessing Collinearity of observations and outliers in the context of extensions to the Wikipedia corpus, based on the concept of Influential Observations.
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TL;DR: The fourth edition of "A Guide to Econometrics" provides an overview of the subject and an intuitive feel for its concepts and techniques without the notation and technical detail often characteristic of econometric textbooks.
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Regression Diagnostics: Identifying Influential Data and Sources of Collinearity

TL;DR: This chapter discusses Detecting Influential Observations and Outliers, a method for assessing Collinearity, and its applications in medicine and science.
Related Papers (5)
Trending Questions (3)
How does the VIF technique measure the degree of multicollinearity in a regression model?

The VIF technique measures the degree of multicollinearity by assessing the correlation of the ith independent variable with other variables in a regression model, cautioning against rigid threshold interpretations.

How do the VIF values for the variables in the study compare to the recommended thresholds?

The paper does not provide information about the specific VIF values for the variables in the study or how they compare to the recommended thresholds.

What is the threshold for VIF values to test for multicollinearity issues.?

The threshold for VIF values to test for multicollinearity issues is commonly considered to be 10.