Abstract
This paper studies sparse density estimation via l1 penalization (SPADES). We focus on estimation in high-dimensional mixture models and nonparametric adaptive density estimation. We show, respectively, that SPADES can recover, with high probability, the unknown components of a mixture of probability densities and that it yields minimax adaptive density estimates. These results are based on a general sparsity oracle inequality that the SPADES estimates satisfy. We offer a data driven method for the choice of the tuning parameter used in the construction of SPADES. The method uses the generalized bisection method first introduced in [10]. The suggested procedure bypasses the need for a grid search and offers substantial computational savings. We complement our theoretical results with a simulation study that employs this method for approximations of one and two-dimensional densities with mixtures. The numerical results strongly support our theoretical findings.
| Original language | English |
|---|---|
| Pages (from-to) | 2525-2558 |
| Number of pages | 34 |
| Journal | Annals of Statistics |
| Volume | 38 |
| Issue number | 4 |
| DOIs | |
| Publication status | Published - 1 Aug 2010 |
Keywords
- Adaptive estimation
- Aggregation
- Consistent model selection
- Lasso
- Minimax risk
- Mixture models
- Nonparametric density estimation
- Oracle inequalities
- Penalized least squares
- Sparsity
- Statistical learning
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