A novel nonconvex, smooth-at-origin penalty for statistical learning

04/06/2022
by   Majnu John, et al.
0

Nonconvex penalties are utilized for regularization in high-dimensional statistical learning algorithms primarily because they yield unbiased or nearly unbiased estimators for the parameters in the model. Nonconvex penalties existing in the literature such as SCAD, MCP, Laplace and arctan have a singularity at origin which makes them useful also for variable selection. However, in several high-dimensional frameworks such as deep learning, variable selection is less of a concern. In this paper, we present a nonconvex penalty which is smooth at origin. The paper includes asymptotic results for ordinary least squares estimators regularized with the new penalty function, showing asymptotic bias that vanishes exponentially fast. We also conducted an empirical study employing deep neural network architecture on three datasets and convolutional neural network on four datasets. The empirical study showed better performance for the new regularization approach in five out of the seven datasets.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/07/2021

ENNS: Variable Selection, Regression, Classification and Deep Neural Network for High-Dimensional Data

High-dimensional, low sample-size (HDLSS) data problems have been a topi...
research
12/17/2013

The Bernstein Function: A Unifying Framework of Nonconvex Penalization in Sparse Estimation

In this paper we study nonconvex penalization using Bernstein functions....
research
12/14/2021

Variable Selection and Regularization via Arbitrary Rectangle-range Generalized Elastic Net

We introduce the arbitrary rectangle-range generalized elastic net penal...
research
04/15/2016

Positive Definite Estimation of Large Covariance Matrix Using Generalized Nonconvex Penalties

This work addresses the issue of large covariance matrix estimation in h...
research
04/14/2021

Grouped Variable Selection with Discrete Optimization: Computational and Statistical Perspectives

We present a new algorithmic framework for grouped variable selection th...
research
12/17/2014

Support recovery without incoherence: A case for nonconvex regularization

We demonstrate that the primal-dual witness proof method may be used to ...
research
09/11/2018

An Efficient ADMM-Based Algorithm to Nonconvex Penalized Support Vector Machines

Support vector machines (SVMs) with sparsity-inducing nonconvex penaltie...

Please sign up or login with your details

Forgot password? Click here to reset