A new learning algorithm for kernel-based topographic map formation is introduced. The kernel parameters are adjusted individually so as to maximize the joint entropy of the kernel outputs. This is done by maximizing the differential entropies of the individual kernel outputs, given that the map’s output redundancy, due to the kernel overlap, needs to be minimized. The latter is achieved by minimizing the mutual information between the kernel outputs. As a kernel, the (radial) incomplete gamma distribution is taken since, for a gaussian input density, the differential entropy of the kernel output will be maximal. Since the theoretically optimal joint entropy performance can be derived for the case of nonoverlapping gaussian mixture densitie...
A new family of kernels for statistical learning is introduced that ex-ploits the geometric structur...
The role of kernels is central to machine learning. Mo-tivated by the importance of power-law distri...
We discuss an unsupervised learning method which is driven by an information theoretic based criteri...
We introduce a new unsupervised learning algorithm for kernel-based topographic map formation of het...
Topographic map algorithms that are aimed at building "faithful representations" also yield maps tha...
This article introduces an extremely simple and local learning rule for topographic map formation. T...
Abstract – Kernel methods have been widely applied to various learning models to extend their nonlin...
We develop a number of fixed point rules for training homogeneous, heteroscedastic but otherwise rad...
Motivation: The diffusion kernel is a general method for computing pairwise distances among all node...
We formulate the metric learning problem as that of minimizing the differential relative entropy bet...
Abstract—This paper introduces a supervised metric learn-ing algorithm, called kernel density metric...
We formulate the metric learning problem as that of minimizing the differential relative entropy bet...
A new family of kernels for statistical learning is introduced that exploits the geometric structure...
Mutual Information (MI) has been widely used as a loss regularizer for training neural networks. Thi...
Following the basic principles of Information-Theoretic Learning (ITL), in this paper we propose Min...
A new family of kernels for statistical learning is introduced that ex-ploits the geometric structur...
The role of kernels is central to machine learning. Mo-tivated by the importance of power-law distri...
We discuss an unsupervised learning method which is driven by an information theoretic based criteri...
We introduce a new unsupervised learning algorithm for kernel-based topographic map formation of het...
Topographic map algorithms that are aimed at building "faithful representations" also yield maps tha...
This article introduces an extremely simple and local learning rule for topographic map formation. T...
Abstract – Kernel methods have been widely applied to various learning models to extend their nonlin...
We develop a number of fixed point rules for training homogeneous, heteroscedastic but otherwise rad...
Motivation: The diffusion kernel is a general method for computing pairwise distances among all node...
We formulate the metric learning problem as that of minimizing the differential relative entropy bet...
Abstract—This paper introduces a supervised metric learn-ing algorithm, called kernel density metric...
We formulate the metric learning problem as that of minimizing the differential relative entropy bet...
A new family of kernels for statistical learning is introduced that exploits the geometric structure...
Mutual Information (MI) has been widely used as a loss regularizer for training neural networks. Thi...
Following the basic principles of Information-Theoretic Learning (ITL), in this paper we propose Min...
A new family of kernels for statistical learning is introduced that ex-ploits the geometric structur...
The role of kernels is central to machine learning. Mo-tivated by the importance of power-law distri...
We discuss an unsupervised learning method which is driven by an information theoretic based criteri...