Summarization: The Akaike (1974) information criterion (AIC) and the minimum description length (MDL) are two well-known criteria for model order selection in the additive white noise case. Our aim is to study the influence on their behavior of a large gap between the signal and the noise eigenvalues and of the noise eigenvalue dispersion. Our results are mostly qualitative and serve to explain the behavior of the AIC and the MDL in some cases of great practical importance. We show that when the noise eigenvalues are not clustered sufficiently closely, then the AIC and the MDL may lead to overmodeling by ignoring an arbitrarily large gap between the signal and the noise eigenvalues. For fixed number of data samples, overmodeling becomes mor...
The Akaike information criterion for model selection presupposes that the parameter space is not sub...
We study the problem of estimating the overall mutual information in M independent parallel discrete...
Abstract — This paper presents an important application of a novel information theoretic order estim...
In the problem of model order selection, it is well known that the widely used minimum description l...
Information theoretic criteria (ITC) have been widely adopted in engineering and statistics for sele...
Abstract: We introduce a new method of model order selection: minimum description complexity (MDC). ...
The concept of overfitting in model selection is explained and demonstrated with an example. After p...
A practical application of information theoretic criteria is presented in this paper. Eigenvalue dec...
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 aim of this paper is to study the penalty functions of the well-known model selection criteria, ...
This paper revisits the model order selection problem in the context of second-order spectrum sensin...
Model selection problems appear frequently in a wide array of applicative domains such as data compr...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
High-resolution methods for estimating signal processing parameters such as bearing angles in array ...
The Akaike information criterion for model selection presupposes that the parameter space is not sub...
We study the problem of estimating the overall mutual information in M independent parallel discrete...
Abstract — This paper presents an important application of a novel information theoretic order estim...
In the problem of model order selection, it is well known that the widely used minimum description l...
Information theoretic criteria (ITC) have been widely adopted in engineering and statistics for sele...
Abstract: We introduce a new method of model order selection: minimum description complexity (MDC). ...
The concept of overfitting in model selection is explained and demonstrated with an example. After p...
A practical application of information theoretic criteria is presented in this paper. Eigenvalue dec...
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 aim of this paper is to study the penalty functions of the well-known model selection criteria, ...
This paper revisits the model order selection problem in the context of second-order spectrum sensin...
Model selection problems appear frequently in a wide array of applicative domains such as data compr...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
High-resolution methods for estimating signal processing parameters such as bearing angles in array ...
The Akaike information criterion for model selection presupposes that the parameter space is not sub...
We study the problem of estimating the overall mutual information in M independent parallel discrete...
Abstract — This paper presents an important application of a novel information theoretic order estim...