Tuning parameter selection in high dimensional penalized likelihood

05/11/2016
by   Yingying Fan, et al.
0

Determining how to appropriately select the tuning parameter is essential in penalized likelihood methods for high-dimensional data analysis. We examine this problem in the setting of penalized likelihood methods for generalized linear models, where the dimensionality of covariates p is allowed to increase exponentially with the sample size n. We propose to select the tuning parameter by optimizing the generalized information criterion (GIC) with an appropriate model complexity penalty. To ensure that we consistently identify the true model, a range for the model complexity penalty is identified in GIC. We find that this model complexity penalty should diverge at the rate of some power of p depending on the tail probability behavior of the response variables. This reveals that using the AIC or BIC to select the tuning parameter may not be adequate for consistently identifying the true model. Based on our theoretical study, we propose a uniform choice of the model complexity penalty and show that the proposed approach consistently identifies the true model among candidate models with asymptotic probability one. We justify the performance of the proposed procedure by numerical simulations and a gene expression data analysis.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/10/2019

A Survey of Tuning Parameter Selection for High-dimensional Regression

Penalized (or regularized) regression, as represented by Lasso and its v...
research
11/02/2012

APPLE: Approximate Path for Penalized Likelihood Estimators

In high-dimensional data analysis, penalized likelihood estimators are s...
research
01/16/2020

A Support Detection and Root Finding Approach for Learning High-dimensional Generalized Linear Models

Feature selection is important for modeling high-dimensional data, where...
research
06/25/2019

Approximate separability of symmetrically penalized least squares in high dimensions: characterization and consequences

We show that the high-dimensional behavior of symmetrically penalized le...
research
11/29/2009

An Iterative Algorithm for Fitting Nonconvex Penalized Generalized Linear Models with Grouped Predictors

High-dimensional data pose challenges in statistical learning and modeli...
research
03/20/2018

Data Distillery: Effective Dimension Estimation via Penalized Probabilistic PCA

The paper tackles the unsupervised estimation of the effective dimension...
research
03/02/2021

Fast selection of nonlinear mixed effect models using penalized likelihood

Nonlinear Mixed effects models are hidden variables models that are wide...

Please sign up or login with your details

Forgot password? Click here to reset