|
|
Structural Learning Seminar
November 18, 2016 17:00–19:00, Moscow, IITP, Bol'shoi Karetnyi per. 19 1
|
|
|
|
|
|
Threshold estimation for sparse high-dimensional deconvolution
D. V. Belomestny |
Number of views: |
This page: | 126 |
|
Abstract:
The problem of covariance estimation for a p-dimensional normal vector X ∼ N(0, Σ) observed with additional noise is studied. Only a very general non-parametric assumption is imposed on the distribution of the noise. In this semi-parametric deconvolution problem spectral thresholding estimators are constructed that adapt to sparsity in Σ. We prove that the minimax convergence rates logarithmic in log p/n with n being the sample size.
|
|