A self-organizing mixture network (SOMN) is derived for learning arbitrary density functions. The network minimizes the Kullback-Leibler information metric by means of stochastic approximation methods. The density functions are modeled as mixtures of parametric distributions A mixture needs not to be homogenous, i.e., it can have different density profiles. The first layer of the network is similar to Kohonen's self-organizing map (SOM), but with the parameters of the component densities as the learning weights. The winning mechanism is based on maximum posterior probability, and updating of the weights is limited to a small neighborhood around the winner. The second layer accumulates the responses of these local nodes, weighted by the lear...
Abstract. The Self-Organizing Map, SOM, is a widely used tool in exploratory data analysis. A theore...
We consider the problem of learning density mixture models for Classification. Traditional learning ...
International audienceTo explore the Perturb and Combine idea for estimating probability densities, ...
A self-organizing mixture network (SOMN) is derived for learning arbitrary density functions. The ne...
Abstract—A self-organizing mixture network (SOMN) is derived for learning arbitrary density function...
The self-organizing mixture network (SOMN) is a learning algorithm for mixture densities, derived fr...
A completely unsupervised mixture distribution network, namely the self-organising mixture network, ...
A Bayesian self-organising map (BSOM) is proposed for learning mixtures of Gaussian distributions. I...
In the statistical approach for self-organizing maps (SOMs), learning is regarded as an estimation a...
University of AmsterdamWe present a variational Expectation-Maximization algorithm to learn proba- b...
Abstract – Kernel methods have been widely applied to various learning models to extend their nonlin...
peer reviewedWe present an expectation-maximization (EM) algorithm that yields topology preserving m...
Minimization of a sum-of-squares or cross-entropy error function leads to network out-puts which app...
This paper presents methods to improve the probability density estimation in hidden Markov models fo...
peer reviewedWe present a variational Expectation-Maximization algorithm to learn probabilistic mixt...
Abstract. The Self-Organizing Map, SOM, is a widely used tool in exploratory data analysis. A theore...
We consider the problem of learning density mixture models for Classification. Traditional learning ...
International audienceTo explore the Perturb and Combine idea for estimating probability densities, ...
A self-organizing mixture network (SOMN) is derived for learning arbitrary density functions. The ne...
Abstract—A self-organizing mixture network (SOMN) is derived for learning arbitrary density function...
The self-organizing mixture network (SOMN) is a learning algorithm for mixture densities, derived fr...
A completely unsupervised mixture distribution network, namely the self-organising mixture network, ...
A Bayesian self-organising map (BSOM) is proposed for learning mixtures of Gaussian distributions. I...
In the statistical approach for self-organizing maps (SOMs), learning is regarded as an estimation a...
University of AmsterdamWe present a variational Expectation-Maximization algorithm to learn proba- b...
Abstract – Kernel methods have been widely applied to various learning models to extend their nonlin...
peer reviewedWe present an expectation-maximization (EM) algorithm that yields topology preserving m...
Minimization of a sum-of-squares or cross-entropy error function leads to network out-puts which app...
This paper presents methods to improve the probability density estimation in hidden Markov models fo...
peer reviewedWe present a variational Expectation-Maximization algorithm to learn probabilistic mixt...
Abstract. The Self-Organizing Map, SOM, is a widely used tool in exploratory data analysis. A theore...
We consider the problem of learning density mixture models for Classification. Traditional learning ...
International audienceTo explore the Perturb and Combine idea for estimating probability densities, ...