The Gaussian mixture model is a powerful statistical tool in data modeling and analysis. Generally, the EM algorithm is utilized to learn the parameters of the Gaussian mixture. However, the EM algorithm is based on the maximum likelihood framework and cannot determine the number of Gaussians for a sample data set. In order to overcome this problem, we propose a new model selection criterion based on the kurtosis and skewness of the estimated Gaussians. Moreover, a new greedy EM algorithm is constructed via the kurtosis and skewness based criterion. The simulation results show that the proposed model selection criterion is efficient and the new greedy EM algorithm is feasible.http://gateway.webofknowledge.com/gateway/Gateway.cgi?GWVersion=2...
Gaussian mixture has been widely used for data modeling and analysis and the EM algorithm is general...
Gaussian mixture model has been used extensively in the fields of information processing and data an...
For the learning of mixtures of Gaussian processes, model selection is an important but difficult pr...
For the Gaussian mixture learning, the expectation-maximization (EM) algorithm as well as its modifi...
As an extremely powerful probability model, Gaussian mixture model (GMM) has been widely used in fie...
Gaussian mixture modeling is a powerful approach for data analysis and the determination of the numb...
The Mixture of Gaussian Processes (MGP) is a powerful statistical learning framework in machine lear...
We address the problem of probability density function estimation using a Gaussian mixture model upd...
The mixture of Gaussian processes(MGP) is a powerful and widely used model in machine learning. Howe...
This paper is concerned with an important issue in finite mixture modelling, the selection of the nu...
peer reviewedWe address the problem of probability density function estimation using a Gaussian mixt...
In recent years, model selection methods have seen significant advancement, but improvements have te...
Clustering is task of assigning the objects into different groups so that the objects are more simil...
Abstract. The EM algorithm for Gaussian mixture models often gets caught in local maxima of the like...
As for Gaussian mixture modeling, the key problem is to select the number of Gaussians in the mixtur...
Gaussian mixture has been widely used for data modeling and analysis and the EM algorithm is general...
Gaussian mixture model has been used extensively in the fields of information processing and data an...
For the learning of mixtures of Gaussian processes, model selection is an important but difficult pr...
For the Gaussian mixture learning, the expectation-maximization (EM) algorithm as well as its modifi...
As an extremely powerful probability model, Gaussian mixture model (GMM) has been widely used in fie...
Gaussian mixture modeling is a powerful approach for data analysis and the determination of the numb...
The Mixture of Gaussian Processes (MGP) is a powerful statistical learning framework in machine lear...
We address the problem of probability density function estimation using a Gaussian mixture model upd...
The mixture of Gaussian processes(MGP) is a powerful and widely used model in machine learning. Howe...
This paper is concerned with an important issue in finite mixture modelling, the selection of the nu...
peer reviewedWe address the problem of probability density function estimation using a Gaussian mixt...
In recent years, model selection methods have seen significant advancement, but improvements have te...
Clustering is task of assigning the objects into different groups so that the objects are more simil...
Abstract. The EM algorithm for Gaussian mixture models often gets caught in local maxima of the like...
As for Gaussian mixture modeling, the key problem is to select the number of Gaussians in the mixtur...
Gaussian mixture has been widely used for data modeling and analysis and the EM algorithm is general...
Gaussian mixture model has been used extensively in the fields of information processing and data an...
For the learning of mixtures of Gaussian processes, model selection is an important but difficult pr...