scispace - formally typeset
Open AccessJournal ArticleDOI

Tuning parameter selection in high dimensional penalized likelihood

Reads0
Chats0
TLDR
In this article, the authors proposed to select the tuning parameter by optimizing the generalized information criterion with an appropriate model complexity penalty, which diverges at the rate of some power of ǫ(p) depending on the tail probability behavior of the response variables.
Abstract
Summary Determining how to select the tuning parameter appropriately 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 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 the generlized information criterion. We find that this model complexity penalty should diverge at the rate of some power of  log (p) depending on the tail probability behaviour of the response variables. This reveals that using the Akaike information criterion or Bayes information criterion to select the tuning parameter may not be adequate for consistently identifying the true model. On the basis of our theoretical study, we propose a uniform choice of the model complexity penalty and show that the approach proposed consistently identifies the true model among candidate models with asymptotic probability 1. We justify the performance of the procedure proposed by numerical simulations and a gene expression data analysis.

read more

Citations
More filters
Journal ArticleDOI

Random Subspace Method for high-dimensional regression with the R package regRSM

TL;DR: A brief overview of the methodology, demonstrate the package’s functionality and present a comparative study of the proposed algorithm and the competitive methods like lasso or CAR scores are presented.
Journal ArticleDOI

Statistical insights into deep neural network learning in subspace classification

TL;DR: The results provide an important complement to the common belief of representational learning, suggesting that at least in some model settings, although the performance of DNN is comparable with that of the ideal two‐step procedure knowing the true latent cluster information a priori, it does not really do clustering in any of its layers.
Posted Content

AIC for Non-concave Penalized Likelihood Method

TL;DR: In this paper, the authors derived an information criterion based on the original definition of the AIC by considering the minimization of the prediction error rather than the model selection consistency, and provided an asymptotically unbiased estimator of the Kullback-Leibler divergence between the true distribution and the estimated distribution.
Journal ArticleDOI

Lasso penalized model selection criteria for high-dimensional multivariate linear regression analysis

TL;DR: Simulation studies show that the proposed criteria outperform existing criteria when the dimension of multiple responses is large and have the model selection consistency, that is, they can asymptotically pick out the true model.
Journal ArticleDOI

Variable selection under multicollinearity using modified log penalty

TL;DR: To handle the multicollinearity issues in the regression analysis, a class of ‘strictly concave penalty function’ is described in this paper and a new penalty function called “modified log penalty” is introduced.
References
More filters
Journal ArticleDOI

Regression Shrinkage and Selection via the Lasso

TL;DR: A new method for estimation in linear models called the lasso, which minimizes the residual sum of squares subject to the sum of the absolute value of the coefficients being less than a constant, is proposed.
Journal ArticleDOI

Estimating the Dimension of a Model

TL;DR: In this paper, the problem of selecting one of a number of models of different dimensions is treated by finding its Bayes solution, and evaluating the leading terms of its asymptotic expansion.
Book

Generalized Linear Models

TL;DR: In this paper, a generalization of the analysis of variance is given for these models using log- likelihoods, illustrated by examples relating to four distributions; the Normal, Binomial (probit analysis, etc.), Poisson (contingency tables), and gamma (variance components).
Book

The Elements of Statistical Learning: Data Mining, Inference, and Prediction

TL;DR: In this paper, the authors describe the important ideas in these areas in a common conceptual framework, and the emphasis is on concepts rather than mathematics, with a liberal use of color graphics.
Book ChapterDOI

Information Theory and an Extension of the Maximum Likelihood Principle

TL;DR: In this paper, it is shown that the classical maximum likelihood principle can be considered to be a method of asymptotic realization of an optimum estimate with respect to a very general information theoretic criterion.