PURO: A Package for Unmasking Regression Outliers
Abstract
Multiple regression outliers should be identified because of their potential effect on parameter estimates and inferences from the regression model. In recent years, researchers have proposed numerous strategies and procedures to identify the outliers. A Mathematica package PURO is introduced which implements seven methods from the latest and most respected outlier detection procedures in the statistics literature.
Keywords
References
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Details
Primary Language
English
Subjects
Engineering
Journal Section
Research Article
Publication Date
January 14, 2011
Submission Date
March 12, 2010
Acceptance Date
-
Published in Issue
Year 2011 Volume: 24 Number: 1