Topographic map algorithms that are aimed at building "faithful representations" also yield maps that transfer the maximum amount of information available about the distribution from which they receive input. The weight density (magnification factor) of these maps is proportional to the input density, or the neurons of these maps have an equal probability to be active (equiprobabilistic map). As MSE minimization is not compatible with equiprobabilistic map formation in general, a number of heuristics have been devised in order to compensate for this discrepancy in competitive learning schemes, e.g. by adding a "conscience" to the neurons' firing behavior. However, rather than minimizing a modified MSE criterion, we introduce a new unsupervi...
No finite sample is sufficient to determine the density, and therefore the entropy, of a signal dire...
International audienceWe unify kernel density estimation and empirical Bayes and address a set of pr...
Abstract—In this paper, we propose a new type of information-theoretic method for the self-organizin...
This article introduces an extremely simple and local learning rule for topographic map formation. T...
A new learning algorithm for kernel-based topographic map formation is introduced. The kernel parame...
We introduce a new unsupervised learning algorithm for kernel-based topographic map formation of het...
We discuss an unsupervised learning method which is driven by an information theoretic based criteri...
An important goal in neural map learning, which can conveniently be accomplished by magnification co...
The self-organizing map (SOM) and neural gas (NG) and generalizations thereof such as the generative...
We develop a number of fixed point rules for training homogeneous, heteroscedastic but otherwise rad...
The generative topographic mapping (GTM) model was introduced by Bishop et al. (1998, Neural Comput....
We are interested in distributions which are derived as a maximumentropy distribution given a set of...
Self-organizing feature maps with self-determined local neighborhood widths are applied to construct...
We show that maximum a posteriori (MAP) statistical methods can be used in nonparametric machine lea...
The Generative Topographic Mapping (GTM) algorithm of Bishop et al. (1997) has been introduced as a ...
No finite sample is sufficient to determine the density, and therefore the entropy, of a signal dire...
International audienceWe unify kernel density estimation and empirical Bayes and address a set of pr...
Abstract—In this paper, we propose a new type of information-theoretic method for the self-organizin...
This article introduces an extremely simple and local learning rule for topographic map formation. T...
A new learning algorithm for kernel-based topographic map formation is introduced. The kernel parame...
We introduce a new unsupervised learning algorithm for kernel-based topographic map formation of het...
We discuss an unsupervised learning method which is driven by an information theoretic based criteri...
An important goal in neural map learning, which can conveniently be accomplished by magnification co...
The self-organizing map (SOM) and neural gas (NG) and generalizations thereof such as the generative...
We develop a number of fixed point rules for training homogeneous, heteroscedastic but otherwise rad...
The generative topographic mapping (GTM) model was introduced by Bishop et al. (1998, Neural Comput....
We are interested in distributions which are derived as a maximumentropy distribution given a set of...
Self-organizing feature maps with self-determined local neighborhood widths are applied to construct...
We show that maximum a posteriori (MAP) statistical methods can be used in nonparametric machine lea...
The Generative Topographic Mapping (GTM) algorithm of Bishop et al. (1997) has been introduced as a ...
No finite sample is sufficient to determine the density, and therefore the entropy, of a signal dire...
International audienceWe unify kernel density estimation and empirical Bayes and address a set of pr...
Abstract—In this paper, we propose a new type of information-theoretic method for the self-organizin...