Model selection and estimation in regression with grouped variables

M Yuan, Y Lin - Journal of the Royal Statistical Society Series B …, 2006 - academic.oup.com
M Yuan, Y Lin
Journal of the Royal Statistical Society Series B: Statistical …, 2006academic.oup.com
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 …
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 selection and show that these extensions give superior performance to the traditional stepwise backward elimination method in factor selection problems. We study the similarities and the differences between these methods. Simulations and real examples are used to illustrate the methods.
Oxford University Press