Information theoretic criteria (ITC) have been widely adopted in engineering and statistics for selecting among an ordered set of candidate models the one that better fits the observed sample data. The selected model minimizes a penalized likelihood metric, where the penalty is determined by the criterion adopted. While rules for choosing a penalty that guarantees a consistent estimate of the model order are known, theoretical tools for its design with finite samples have never been provided in a general setting. In this paper, we study model order selection for finite samples under a design perspective, focusing on the generalized information criterion (GIC), which embraces the most common ITC. The theory is general, and as case studies we...
Model selection problems appear frequently in a wide array of applicative domains such as data compr...
This paper considers information criteria as model evaluation tools for nonlinear threshold models. ...
This paper considers model selection in panels where incidental parameters are present. Primary inte...
Information theoretic criteria (ITC) have been widely adopted in engineering and statistics for sele...
The aim of this paper is to study the penalty functions of the well-known model selection criteria, ...
To build good models, we need to know the appropriate model size. To handle this problem, a variety ...
We consider issues related to the order of an autoregression selected using information criteria. We...
The Akaike information criterion for model selection presupposes that the parameter space is not sub...
A common approach for estimating the number of wireless sources is to adopt model order selection ba...
We consider the problem of model (or variable) selection in the classical regression model using the...
Abstract: We introduce a new method of model order selection: minimum description complexity (MDC). ...
The purpose of this paper is to compare different autoregressive models performance in case of incor...
The Akaike information criterion for model selection presupposes that the parameter space is not sub...
Summarization: The Akaike (1974) information criterion (AIC) and the minimum description length (MDL...
[[abstract]]We consider penalized likelihood criteria for selecting models of dependent processes. T...
Model selection problems appear frequently in a wide array of applicative domains such as data compr...
This paper considers information criteria as model evaluation tools for nonlinear threshold models. ...
This paper considers model selection in panels where incidental parameters are present. Primary inte...
Information theoretic criteria (ITC) have been widely adopted in engineering and statistics for sele...
The aim of this paper is to study the penalty functions of the well-known model selection criteria, ...
To build good models, we need to know the appropriate model size. To handle this problem, a variety ...
We consider issues related to the order of an autoregression selected using information criteria. We...
The Akaike information criterion for model selection presupposes that the parameter space is not sub...
A common approach for estimating the number of wireless sources is to adopt model order selection ba...
We consider the problem of model (or variable) selection in the classical regression model using the...
Abstract: We introduce a new method of model order selection: minimum description complexity (MDC). ...
The purpose of this paper is to compare different autoregressive models performance in case of incor...
The Akaike information criterion for model selection presupposes that the parameter space is not sub...
Summarization: The Akaike (1974) information criterion (AIC) and the minimum description length (MDL...
[[abstract]]We consider penalized likelihood criteria for selecting models of dependent processes. T...
Model selection problems appear frequently in a wide array of applicative domains such as data compr...
This paper considers information criteria as model evaluation tools for nonlinear threshold models. ...
This paper considers model selection in panels where incidental parameters are present. Primary inte...