English

Smooth blockwise iterative thresholding: a smooth fixed point estimator based on the likelihood's block gradient

Methodology 2011-10-06 v1

Abstract

The proposed smooth blockwise iterative thresholding estimator (SBITE) is a model selection technique defined as a fixed point reached by iterating a likelihood gradient-based thresholding function. The smooth James-Stein thresholding function has two regularization parameters λ\lambda and ν\nu, and a smoothness parameter ss. It enjoys smoothness like ridge regression and selects variables like lasso. Focusing on Gaussian regression, we show that SBITE is uniquely defined, and that its Stein unbiased risk estimate is a smooth function of λ\lambda and ν\nu, for better selection of the two regularization parameters. We perform a Monte-Carlo simulation to investigate the predictive and oracle properties of this smooth version of adaptive lasso. The motivation is a gravitational wave burst detection problem from several concomitant time series. A nonparametric wavelet-based estimator is developed to combine information from all captors by block-thresholding multiresolution coefficients. We study how the smoothness parameter ss tempers the erraticity of the risk estimate, and derive a universal threshold, an information criterion and an oracle inequality in this canonical setting.

Keywords

Cite

@article{arxiv.1110.1012,
  title  = {Smooth blockwise iterative thresholding: a smooth fixed point estimator based on the likelihood's block gradient},
  author = {Sylvain Sardy},
  journal= {arXiv preprint arXiv:1110.1012},
  year   = {2011}
}
R2 v1 2026-06-21T19:15:34.416Z