On the conditions used to prove oracle results for the Lasso
ETH Zurich · Federal Statistical Office
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Abstract
Oracle inequalities and variable selection properties for the Lasso in linear models have been established under a variety of different assumptions on the design matrix. We show in this paper how the different conditions and concepts relate to each other. The restricted eigenvalue condition [2] or the slightly weaker compatibility condition [18] are sufficient for oracle results. We argue that both these conditions allow for a fairly general class of design matrices. Hence, optimality of the Lasso for prediction and estimation holds for more general situations than what it appears from coherence [5, 4] or restricted isometry [10] assumptions.
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Topics
Keywords
- Mathematics
- Lasso (programming language)
- Oracle
- Variety (cybernetics)
- Design matrix
- Applied mathematics
- Eigenvalues and eigenvectors
- Estimator
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