We investigate the combination of the Kohonen networks with the kernel methods in the context of classification. We use the idea of kernel functions to handle products of vectors of arbitrary dimension. We indicate how to build Kohonen networks with robust classification performance by transformation of the original data vectors into a possibly infinite dimensional space. The resulting Kohonen networks preserve a non-Euclidean neighborhood structure of the input space that fits the properties of the data. We show how to optimize the transformation of the data vectors in order to obtain higher classification performance. We compare the kernel-Kohonen networks with the regular Kohonen networks in the context of a classification task
An approach is developed to multiscale image segmentation, based on pixel classification by means of...
Ritter H, K S. Kohonens Self-Organizing Maps: Exploring their Computational Capabilities. In: IEEE ...
Kernel Methods are a new class of pattern analysis algorithms which can be applied to very general t...
We investigate the combination of the Kohonen networks with the kernel methods in the context of cla...
This work introduces a tree structured neural network model for topology preserving vector quantizat...
In this paper we present a software model of the Winner Takes Most (WTM) Kohonen neural network (KNN...
International audienceThis chapter introduces a powerful class of machine learning approaches called...
This thesis is concerned with the application of Kohonen topology-preserving neural network maps (KN...
This article presents the Kohonen network application in the speech analysis. The Authors have modif...
In this paper Kohonen feature map is applied to the so-called two-spiral problem. Even if this netwo...
Recently introduced in Machine Learning, the notion of kernels has drawn a lot of interest as it all...
In this paper, a class-modeling technique based on Kohonen artificial neural networks is presented. ...
We investigate how to learn a kernel matrix for high dimensional data that lies on or near a low dim...
Empirical observation of high dimensional phenomena, such as the double descent behavior, has attrac...
Kernel methods are nonparametric feature extraction techniques that attempt to boost the learning ca...
An approach is developed to multiscale image segmentation, based on pixel classification by means of...
Ritter H, K S. Kohonens Self-Organizing Maps: Exploring their Computational Capabilities. In: IEEE ...
Kernel Methods are a new class of pattern analysis algorithms which can be applied to very general t...
We investigate the combination of the Kohonen networks with the kernel methods in the context of cla...
This work introduces a tree structured neural network model for topology preserving vector quantizat...
In this paper we present a software model of the Winner Takes Most (WTM) Kohonen neural network (KNN...
International audienceThis chapter introduces a powerful class of machine learning approaches called...
This thesis is concerned with the application of Kohonen topology-preserving neural network maps (KN...
This article presents the Kohonen network application in the speech analysis. The Authors have modif...
In this paper Kohonen feature map is applied to the so-called two-spiral problem. Even if this netwo...
Recently introduced in Machine Learning, the notion of kernels has drawn a lot of interest as it all...
In this paper, a class-modeling technique based on Kohonen artificial neural networks is presented. ...
We investigate how to learn a kernel matrix for high dimensional data that lies on or near a low dim...
Empirical observation of high dimensional phenomena, such as the double descent behavior, has attrac...
Kernel methods are nonparametric feature extraction techniques that attempt to boost the learning ca...
An approach is developed to multiscale image segmentation, based on pixel classification by means of...
Ritter H, K S. Kohonens Self-Organizing Maps: Exploring their Computational Capabilities. In: IEEE ...
Kernel Methods are a new class of pattern analysis algorithms which can be applied to very general t...