期刊
BERNOULLI
卷 16, 期 4, 页码 1369-1384出版社
INT STATISTICAL INST
DOI: 10.3150/10-BEJ252
关键词
group selection; high-dimensional data; penalized regression; rate consistency; selection consistency
资金
- NIH [R01CA120988]
- NSF [DMS-07-06108, 0805670]
- Direct For Mathematical & Physical Scien
- Division Of Mathematical Sciences [0805670] Funding Source: National Science Foundation
In regression problems where covariates can be naturally grouped, the group Lasso is an attractive method for variable selection since it respects the grouping structure in the data. We study the selection and estimation properties of the group Lasso in high-dimensional settings when the number of groups exceeds the sample size. We provide sufficient conditions under which the group Lasso selects a model whose dimension is comparable with the underlying model with high probability and is estimation consistent. However, the group Lasso is, in general, not selection consistent and also tends to select groups that are not important in the model. To improve the selection results, we propose an adaptive group Lasso method which is a generalization of the adaptive Lasso and requires an initial estimator. We show that the adaptive group Lasso is consistent in group selection under certain conditions if the group Lasso is used as the initial estimator.
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