Automated model selection has been used to bridge the gap between experts and end users since 1960s starting with Stepwise and recently with Autometrics for single equation. This extension of Autometrics for model selection was also developed for multiple equations by integrating it with seemingly unrelated regressions equations (SURE) and estimated using feasible generalized least squares (FGLS), known as SURE-Autometrics algorithm. However, SURE-Autometrics has not been estimated using maximum likelihood estimation (MLE). Therefore, in this study SUREAutometrics is improvised using two MLE methods, which are iterative feasible generalized least squares (IFGLS) and expectation-maximization (EM) algorithm, named as SURE(IFGLS)-Autometrics a...
Before using a parametric model one has to be sure that it offers a reasonable description of the sy...
This paper proposes model selection criteria (MSC) for unconditional moment models using generalized...
We introduce glmulti, an R package for automated model selection and multi-model inference with glm ...
The ambiguous process of model building can be explained by expert modellers due to their tacit know...
A good model is a model that encapsulates the initial process and therefore represents a close estim...
The Autometrics is an algorithm for single equation model selection.It is a hybrid method which comb...
Automatic model selection by using algorithm can avoid huge variability in model specification proce...
Algorithm is an important element in any problem solving situation.In statistical modelling strategy...
In the era of big data, analysts usually explore various statistical models or machine-learning meth...
After reviewing the simulation performance of general-to-specific automatic regression model selecti...
RePEc Working Paper Series: No. 03/2011This review surveys a number of common Model Selection Algori...
The classical approach to statistical analysis is usually based upon finding values for model parame...
ABSTRAK Nurnaini Hidayati, 2011. ESTIMASI PARAMETER MODEL KELAS LATEN MENGGUNAKAN A...
This paper proposes model selection criteria (MSC) for unconditional moment models using generalized...
URL des Documents de travail : https://centredeconomiesorbonne.univ-paris1.fr/documents-de-travail-d...
Before using a parametric model one has to be sure that it offers a reasonable description of the sy...
This paper proposes model selection criteria (MSC) for unconditional moment models using generalized...
We introduce glmulti, an R package for automated model selection and multi-model inference with glm ...
The ambiguous process of model building can be explained by expert modellers due to their tacit know...
A good model is a model that encapsulates the initial process and therefore represents a close estim...
The Autometrics is an algorithm for single equation model selection.It is a hybrid method which comb...
Automatic model selection by using algorithm can avoid huge variability in model specification proce...
Algorithm is an important element in any problem solving situation.In statistical modelling strategy...
In the era of big data, analysts usually explore various statistical models or machine-learning meth...
After reviewing the simulation performance of general-to-specific automatic regression model selecti...
RePEc Working Paper Series: No. 03/2011This review surveys a number of common Model Selection Algori...
The classical approach to statistical analysis is usually based upon finding values for model parame...
ABSTRAK Nurnaini Hidayati, 2011. ESTIMASI PARAMETER MODEL KELAS LATEN MENGGUNAKAN A...
This paper proposes model selection criteria (MSC) for unconditional moment models using generalized...
URL des Documents de travail : https://centredeconomiesorbonne.univ-paris1.fr/documents-de-travail-d...
Before using a parametric model one has to be sure that it offers a reasonable description of the sy...
This paper proposes model selection criteria (MSC) for unconditional moment models using generalized...
We introduce glmulti, an R package for automated model selection and multi-model inference with glm ...