Relative Importance for Linear Regression in R: The Package relaimpo
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2006
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Abstract
Relative importance is a topic that has seen a lot of interest in recent years, particularly in applied work. The R package relaimpo implements six different metrics for assessing relative importance of regressors in the linear model, two of which are recommended - averaging over orderings of regressors and a newly proposed metric (Feldman 2005) called pmvd. Apart from delivering the metrics themselves, relaimpo also provides (exploratory) bootstrap confidence intervals. This paper offers a brief tutorial introduction to the package. The methods and relaimpo's functionality are illustrated using the data set swiss that is generally available in R. The paper targets readers who have a basic understanding of multiple linear regression. For the background of more advanced aspects, references are provided.
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groemping2006relativejournal
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| Authors | Groemping, Ulrike; |
| Journal | journal of statistical software |
| Year | 2006 |
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| Keywords | Keywords not found |
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