Model Selection and Estimation in Regression with Grouped Variables

Georgia Institute of Technology · University of Wisconsin–Madison

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Abstract

Summary We consider the problem of selecting grouped variables (factors) for accurate prediction in regression. Such a problem arises naturally in many practical situations with the multifactor analysis-of-variance problem as the most important and well-known example. Instead of selecting factors by stepwise backward elimination, we focus on the accuracy of estimation and consider extensions of the lasso, the LARS algorithm and the non-negative garrotte for factor selection. The lasso, the LARS algorithm and the non-negative garrotte are recently proposed regression methods that can be used to select individual variables. We study and propose efficient algorithms for the extensions of these methods for factor…

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7,435
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40.47
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100%
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Authors

2

Topics & keywords

Keywords
  • Lasso (programming language)
  • Selection (genetic algorithm)
  • Stepwise regression
  • Feature selection
  • Variance (accounting)
  • Computer science
  • Regression
  • Regression analysis
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