Minimization of a sum-of-squares or cross-entropy error function leads to network outputs which approximate the conditional averages of the target data, conditioned on the input vector. For classifications problems, with a suitably chosen target coding scheme, these averages represent the posterior probabilities of class membership, and so can be regarded as optimal. For problems involving the prediction of continuous variables, however, the conditional averages provide only a very limited description of the properties of the target variables. This is particularly true for problems in which the mapping to be learned is multi-valued, as often arises in the solution of inverse problems, since the average of several correct target values is no...
Mixture density networks (MDNs) can be used to generate posterior density functions of model paramet...
We consider the problem of learning density mixture models for Classification. Traditional learning ...
Mixtures of polynomials (MoPs) are a non-parametric density estimation technique especially designed...
Minimization of a sum-of-squares or cross-entropy error function leads to network outputs which appr...
We have proposed a novel robust inversion-based neurocontroller that searches for the optimal contro...
Mixture Density Networks are a principled method to model conditional probability density functions ...
summary:Recently a new interesting architecture of neural networks called “mixture of experts” has b...
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...
Abstract: We have proposed a novel robust inversion-based neurocontroller that searches for the opti...
Mixtures of polynomials (MoPs) are a non-parametric density estimation technique for hybrid Bayesian...
A completely unsupervised mixture distribution network, namely the self-organising mixture network, ...
In this paper, the first algorithm for learning hybrid Bayesian Networks with Gaussian mixture and D...
The use of multiple neural models have attracted much interest recently as predictive models in syst...
In this paper we introduce an algorithm for learning hybrid Bayesian networks from data. The result ...
Mixture density networks (MDNs) can be used to generate posterior density functions of model paramet...
We consider the problem of learning density mixture models for Classification. Traditional learning ...
Mixtures of polynomials (MoPs) are a non-parametric density estimation technique especially designed...
Minimization of a sum-of-squares or cross-entropy error function leads to network outputs which appr...
We have proposed a novel robust inversion-based neurocontroller that searches for the optimal contro...
Mixture Density Networks are a principled method to model conditional probability density functions ...
summary:Recently a new interesting architecture of neural networks called “mixture of experts” has b...
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...
Abstract: We have proposed a novel robust inversion-based neurocontroller that searches for the opti...
Mixtures of polynomials (MoPs) are a non-parametric density estimation technique for hybrid Bayesian...
A completely unsupervised mixture distribution network, namely the self-organising mixture network, ...
In this paper, the first algorithm for learning hybrid Bayesian Networks with Gaussian mixture and D...
The use of multiple neural models have attracted much interest recently as predictive models in syst...
In this paper we introduce an algorithm for learning hybrid Bayesian networks from data. The result ...
Mixture density networks (MDNs) can be used to generate posterior density functions of model paramet...
We consider the problem of learning density mixture models for Classification. Traditional learning ...
Mixtures of polynomials (MoPs) are a non-parametric density estimation technique especially designed...