The well-known mixtures of experts (ME) model has been used in many different areas to account for nonlinearities and other complexities in the data, such as time series prediction. We usually train ME model by expectation maximization (EM) algorithm for maximum likelihood learning. However, the number of experts has to be determined first, which is often hardly known. Derived from regularization theory, a regularized minimum cross-entropy (RMCE) algorithm is proposed to train ME model, which can automatically make model selection. When time series is modeled by ME, it is demonstrated by some climate prediction experiments that RMCE algorithm outperforms EM algorithm. We also compare RMCE algorithm with other regression methods such as back...
International audienceMixture of experts (MoE) models are successful neural-network architectures fo...
This paper presents a new approach to estimating mixture models based on a recent inference principl...
Approximation of entropies of various types using machine learning (ML) regression methods are shown...
The well-known mixtures of experts(ME) model is usually trained by expectation maximization (EM) alg...
The well-known mixtures of experts(ME) model is usually trained by expectation maximization(EM) algo...
Curve detection is a basic problem in image processing and remains a difficult problem. In this pape...
Today, there is growing interest in the automatic classification of a variety of tasks, such as weat...
As for cluster analysis, the key problem is to determine the number of clusters. This paper presents...
International audience.We consider the Mixture of Experts (MoE) modeling for clustering heterogeneou...
As for Gaussian mixture modeling, the key problem is to select the number of Gaussians in the mixtur...
Frequency prediction after a disturbance has received increasing research attention given its substa...
Mixtures-of-Experts models and their maximum likelihood estimation (MLE) via the EM algorithm have b...
In Gaussian mixture (GM) modeling, it is crucial to select the number of Gaussians for a sample data...
In these days, there are a growing interest in pattern recognition for tasks as prediction of weathe...
In Gaussian mixture modeling, it is crucial to select the number of Gaussians or mixture model for a...
International audienceMixture of experts (MoE) models are successful neural-network architectures fo...
This paper presents a new approach to estimating mixture models based on a recent inference principl...
Approximation of entropies of various types using machine learning (ML) regression methods are shown...
The well-known mixtures of experts(ME) model is usually trained by expectation maximization (EM) alg...
The well-known mixtures of experts(ME) model is usually trained by expectation maximization(EM) algo...
Curve detection is a basic problem in image processing and remains a difficult problem. In this pape...
Today, there is growing interest in the automatic classification of a variety of tasks, such as weat...
As for cluster analysis, the key problem is to determine the number of clusters. This paper presents...
International audience.We consider the Mixture of Experts (MoE) modeling for clustering heterogeneou...
As for Gaussian mixture modeling, the key problem is to select the number of Gaussians in the mixtur...
Frequency prediction after a disturbance has received increasing research attention given its substa...
Mixtures-of-Experts models and their maximum likelihood estimation (MLE) via the EM algorithm have b...
In Gaussian mixture (GM) modeling, it is crucial to select the number of Gaussians for a sample data...
In these days, there are a growing interest in pattern recognition for tasks as prediction of weathe...
In Gaussian mixture modeling, it is crucial to select the number of Gaussians or mixture model for a...
International audienceMixture of experts (MoE) models are successful neural-network architectures fo...
This paper presents a new approach to estimating mixture models based on a recent inference principl...
Approximation of entropies of various types using machine learning (ML) regression methods are shown...