Derived from regularization theory, an adaptive entropy regularized likelihood (ERL) learning algorithm is presented for Gaussian mixture modeling, which is then proved to be actually a generalized competitive learning. The simulation experiments demonstrate that our adaptive ERL learning algorithm can make the parameter estimation with automatic model selection for Gaussian mixture even when two or more Gaussians are overlapped in a high degree,http://gateway.webofknowledge.com/gateway/Gateway.cgi?GWVersion=2&SrcApp=PARTNER_APP&SrcAuth=LinksAMR&KeyUT=WOS:000239623500081&DestLinkType=FullRecord&DestApp=ALL_WOS&UsrCustomerID=8e1609b174ce4e31116a60747a720701Computer Science, Artificial IntelligenceSCI(E)EICPCI-S(ISTP)
Generalised linear models for multi-class classification problems are one of the fundamental buildin...
In this paper, a Bayesian Ying-Yang (BYY) harmony enforcing regularization (BYY-HER) algorithm is pr...
Generalised linear models for multi-class classification problems are one of the fundamental buildin...
Derived from regularization theory, an adaptive entropy regularized likelihood (ERL) learning algori...
In Gaussian mixture modeling, it is crucial to select the number of Gaussians or mixture model for a...
In Gaussian mixture (GM) modeling, it is crucial to select the number of Gaussians for a sample data...
As for Gaussian mixture modeling, the key problem is to select the number of Gaussians in the mixtur...
The Gaussian mixture model is widely applied in the fields of data analysis and information processi...
Gaussian mixture is a powerful statistical tool for data modeling and analysis. However, its model s...
In finite mixture modelling, it is crucial to select the number of components for a data set. We hav...
When learning Gaussian mixtures from multivariate data, it is crucial to select the appropriate numb...
In finite mixture modelling, it is crucial to select the number of components for a data set. We hav...
In this paper, a dynamically regularized harmony learning (DRHL) algorithm is proposed for Gaussian ...
Gaussian mixture modeling is a powerful approach for data analysis and the determination of the numb...
Gaussian mixture has been widely used for data modeling and analysis and the EM algorithm is general...
Generalised linear models for multi-class classification problems are one of the fundamental buildin...
In this paper, a Bayesian Ying-Yang (BYY) harmony enforcing regularization (BYY-HER) algorithm is pr...
Generalised linear models for multi-class classification problems are one of the fundamental buildin...
Derived from regularization theory, an adaptive entropy regularized likelihood (ERL) learning algori...
In Gaussian mixture modeling, it is crucial to select the number of Gaussians or mixture model for a...
In Gaussian mixture (GM) modeling, it is crucial to select the number of Gaussians for a sample data...
As for Gaussian mixture modeling, the key problem is to select the number of Gaussians in the mixtur...
The Gaussian mixture model is widely applied in the fields of data analysis and information processi...
Gaussian mixture is a powerful statistical tool for data modeling and analysis. However, its model s...
In finite mixture modelling, it is crucial to select the number of components for a data set. We hav...
When learning Gaussian mixtures from multivariate data, it is crucial to select the appropriate numb...
In finite mixture modelling, it is crucial to select the number of components for a data set. We hav...
In this paper, a dynamically regularized harmony learning (DRHL) algorithm is proposed for Gaussian ...
Gaussian mixture modeling is a powerful approach for data analysis and the determination of the numb...
Gaussian mixture has been widely used for data modeling and analysis and the EM algorithm is general...
Generalised linear models for multi-class classification problems are one of the fundamental buildin...
In this paper, a Bayesian Ying-Yang (BYY) harmony enforcing regularization (BYY-HER) algorithm is pr...
Generalised linear models for multi-class classification problems are one of the fundamental buildin...