Abstract
We consider the problem of estimation of a linear functional in the Gaussian sequence model where the unknown vector $\theta \in\mathbb{R}^{d}$ belongs to a class of $s$-sparse vectors with unknown $s$. We suggest an adaptive estimator achieving a nonasymptotic rate of convergence that differs from the minimax rate at most by a logarithmic factor. We also show that this optimal adaptive rate cannot be improved when $s$ is unknown. Furthermore, we address the issue of simultaneous adaptation to $s$ and to the variance $\sigma^{2}$ of the noise. We suggest an estimator that achieves the optimal adaptive rate when both $s$ and $\sigma^{2}$ are unknown.
Citation
Olivier Collier. Laëtitia Comminges. Alexandre B. Tsybakov. Nicolas Verzelen. "Optimal adaptive estimation of linear functionals under sparsity." Ann. Statist. 46 (6A) 3130 - 3150, December 2018. https://doi.org/10.1214/17-AOS1653
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