Information criteria such as the Akaike information criterion (AIC) and Bayesian information criterion (BIC) are commonly used for model selection. However, the current theory does not support unconventional data, so naive use of these criteria is not suitable for data with missing values. Imputation, at the core of most alternative methods, is both distorted as well as computationally demanding. We propose a new approach that enables the use of classic well-known information criteria for model selection when there are missing data. We adapt the current theory of information criteria through normalization, accounting for the different sample sizes used for each candidate model (focusing on AIC and BIC). Interestingly, when the sample sizes ...
In Bioinformatics and other areas the model selection is a process of choosing a model from set of c...
In this paper, we consider an optimization approach for model selection using Akaike's Information C...
Information criterion is an important factor for model structure selection in system identification....
We apply the nonconcave penalized likelihood approach to obtain variable selections as well as shrin...
The classical model selection criteria, such as the Bayesian Information Criterion (BIC) or Akaike i...
To build good models, we need to know the appropriate model size. To handle this problem, a variety ...
Abstract — Information criteria are an appropriate and widely used tool for solving model selection ...
[[abstract]]We consider penalized likelihood criteria for selecting models of dependent processes. T...
The Bayesian information criterion (BIC), the Akaike information criterion (AIC), and some other ind...
The ordinary Bayes information criterion is too liberal for model selection when the model space is ...
This thesis is on model selection using information criteria. The information criteria include gener...
Selecting between competing structural equation models is a common problem. Often selection is based...
Model selection is the problem of distinguishing competing models, perhaps featuring different numbe...
The selection of an appropriate model is a fundamental step of the data analysis in small area estim...
Many statistical models are given in the form of non-normalized densities with an intractable normal...
In Bioinformatics and other areas the model selection is a process of choosing a model from set of c...
In this paper, we consider an optimization approach for model selection using Akaike's Information C...
Information criterion is an important factor for model structure selection in system identification....
We apply the nonconcave penalized likelihood approach to obtain variable selections as well as shrin...
The classical model selection criteria, such as the Bayesian Information Criterion (BIC) or Akaike i...
To build good models, we need to know the appropriate model size. To handle this problem, a variety ...
Abstract — Information criteria are an appropriate and widely used tool for solving model selection ...
[[abstract]]We consider penalized likelihood criteria for selecting models of dependent processes. T...
The Bayesian information criterion (BIC), the Akaike information criterion (AIC), and some other ind...
The ordinary Bayes information criterion is too liberal for model selection when the model space is ...
This thesis is on model selection using information criteria. The information criteria include gener...
Selecting between competing structural equation models is a common problem. Often selection is based...
Model selection is the problem of distinguishing competing models, perhaps featuring different numbe...
The selection of an appropriate model is a fundamental step of the data analysis in small area estim...
Many statistical models are given in the form of non-normalized densities with an intractable normal...
In Bioinformatics and other areas the model selection is a process of choosing a model from set of c...
In this paper, we consider an optimization approach for model selection using Akaike's Information C...
Information criterion is an important factor for model structure selection in system identification....