Likelihood Adaptively Modified Penalties
Methodology
2013-08-26 v1 Statistics Theory
Machine Learning
Statistics Theory
Abstract
A new family of penalty functions, adaptive to likelihood, is introduced for model selection in general regression models. It arises naturally through assuming certain types of prior distribution on the regression parameters. To study stability properties of the penalized maximum likelihood estimator, two types of asymptotic stability are defined. Theoretical properties, including the parameter estimation consistency, model selection consistency, and asymptotic stability, are established under suitable regularity conditions. An efficient coordinate-descent algorithm is proposed. Simulation results and real data analysis show that the proposed method has competitive performance in comparison with existing ones.
Keywords
Cite
@article{arxiv.1308.5036,
title = {Likelihood Adaptively Modified Penalties},
author = {Yang Feng and Tengfei Li and Zhiliang Ying},
journal= {arXiv preprint arXiv:1308.5036},
year = {2013}
}
Comments
42 pages, 4 figures