An extended self-organising learning scheme is proposed, namely the Bayesian self-organising map (BSOM), in which both the distance measure and neighbourhood function have been replaced by the neuron's `on-line' estimated posterior probabilities. Such posteriors, in a Bayesian inference sense, will then contribute to gradually sharpening the estimation for input distributions and model parameters for which generally there is little prior knowledge. The BSOM has been successfully used to team the underlying mixture distribution of input data, and hence form an optimal pattern classifie
In this paper we present a practical Bayesian self-supervised learning method with Cyclical Stochast...
A new learning algorithm is presented for enhancing the scale or structure of an already trained sel...
Growing models have been widely used for clustering or topology learning. Traditionally these models...
An extended self-organising learning scheme is proposed, namely the Bayesian self-organising map (BS...
A Bayesian self-organising map (BSOM) is proposed for learning mixtures of Gaussian distributions. I...
In this paper, we propose an extended self-organising learning scheme, in which both distance measur...
A Bayesian SOM (BSOM) [8], is proposed and applied to the unsupervised learning of Gaussian mixture ...
A Bayesian SOM (BSOM) [8], is proposed and applied to the unsupervised learning of Gaussian mixture...
A self-organizing mixture network (SOMN) is derived for learning arbitrary density functions. The ne...
Abstract. Self-Organising Maps (SOM) provide a method of feature mapping from multi-dimensional spac...
University of AmsterdamWe present a variational Expectation-Maximization algorithm to learn proba- b...
In this paper, we apply the combination method of bagging which has been developed in the context of...
In this paper Bayesian methods are used to analyze some of the proper-ties of a special type of Mark...
Abstract—A self-organizing mixture network (SOMN) is derived for learning arbitrary density function...
The Self-Organizing Map (SOM) has applications like dimension reduction, data clustering, image anal...
In this paper we present a practical Bayesian self-supervised learning method with Cyclical Stochast...
A new learning algorithm is presented for enhancing the scale or structure of an already trained sel...
Growing models have been widely used for clustering or topology learning. Traditionally these models...
An extended self-organising learning scheme is proposed, namely the Bayesian self-organising map (BS...
A Bayesian self-organising map (BSOM) is proposed for learning mixtures of Gaussian distributions. I...
In this paper, we propose an extended self-organising learning scheme, in which both distance measur...
A Bayesian SOM (BSOM) [8], is proposed and applied to the unsupervised learning of Gaussian mixture ...
A Bayesian SOM (BSOM) [8], is proposed and applied to the unsupervised learning of Gaussian mixture...
A self-organizing mixture network (SOMN) is derived for learning arbitrary density functions. The ne...
Abstract. Self-Organising Maps (SOM) provide a method of feature mapping from multi-dimensional spac...
University of AmsterdamWe present a variational Expectation-Maximization algorithm to learn proba- b...
In this paper, we apply the combination method of bagging which has been developed in the context of...
In this paper Bayesian methods are used to analyze some of the proper-ties of a special type of Mark...
Abstract—A self-organizing mixture network (SOMN) is derived for learning arbitrary density function...
The Self-Organizing Map (SOM) has applications like dimension reduction, data clustering, image anal...
In this paper we present a practical Bayesian self-supervised learning method with Cyclical Stochast...
A new learning algorithm is presented for enhancing the scale or structure of an already trained sel...
Growing models have been widely used for clustering or topology learning. Traditionally these models...