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Prediction error property of the Lasso Estimator and its generalization

journal contribution
posted on 2003-01-01, 00:00 authored by Fuchun Huang
The lasso procedure is an estimator-shrinkage and variable selection method. This paper shows that there always exists an interval of tuning parameter values such that the corresponding mean squared prediction error for the lasso estimator is smaller than for the ordinary least squares estimator. For an estimator satisfying some condition such as unbiasedness, the paper defines the corresponding generalized lasso estimator. Its mean squared prediction error is shown to be smaller than that of the estimator for values of the tuning parameter in some interval. This implies that all unbiased estimators are not admissible. Simulation results for five models support the theoretical results.

History

Journal

Australian & New Zealand journal of statistics

Volume

45

Issue

2

Pagination

217 - 228

Publisher

Wiley-Blackwell Publishing Asia

Location

Richmond, Vic.

ISSN

1369-1473

eISSN

1467-842X

Language

eng

Publication classification

C1 Refereed article in a scholarly journal

Copyright notice

2003, Australian Statistical Publishing Association Inc.

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