Principal component analysis based on Hebbian learning is originally designed for data processing inEuclidean spaces. We present in this contribution an extension of Oja's Hebbian learning approach fornon-Euclidean spaces. We show that for Banach spaces the Hebbian learning can be carried out using theunderlying semi-inner product. Prominent examples for such Banach spaces are the lp-spaces for p≠2.For kernels spaces, as applied in support vector machines or kernelized vector quantization, thisapproach can be formulated as an online learning scheme based on the differentiable kernel. Hence,principal component analysis can be explicitly carried out in the respective data spaces but nowequipped with a non-Euclidean metric. In the article we p...
Principal components analysis allows to reduce the dimensionality of a dataset in which there are la...
AbstractThe functional principal components analysis (PCA) involves new considerations on the mechan...
We present a novel method based on a recently proposed extension to a negative feedback network whic...
Principal component analysis based on Hebbian learning is originally designed for data processing in...
The topic of this thesis is to define a unified and generalized scheme for Hebbian approaches in non...
In the present contribution we tackle the problem of nonlinear independent component analysis by non...
A new method for performing a kernel principal component analysis is proposed. By kernelizing the ge...
A new method for performing a kernel principal component analysis is proposed. By kernelizing the ge...
We investigate an extension of Hebbian learning in a principal component analysis network which has ...
In this paper, we propose a new learning (SPRM) called the Hebbian Learning Subspace Method (HLSM). ...
Abstract: This report consists of three chapters that together give a view of how the very simple st...
The Hebbian neural learning algorithm that implements Principal Component Analysis (PCA) can be exte...
In this paper, we review an extension of the learning rules in a Principal Component Analysis networ...
Principal Component Analysis (PCA) is perhaps the most prominent learning tool for dimensionality re...
We present a class of neural networks algorithms based on simple Hebbian learning which allow the fi...
Principal components analysis allows to reduce the dimensionality of a dataset in which there are la...
AbstractThe functional principal components analysis (PCA) involves new considerations on the mechan...
We present a novel method based on a recently proposed extension to a negative feedback network whic...
Principal component analysis based on Hebbian learning is originally designed for data processing in...
The topic of this thesis is to define a unified and generalized scheme for Hebbian approaches in non...
In the present contribution we tackle the problem of nonlinear independent component analysis by non...
A new method for performing a kernel principal component analysis is proposed. By kernelizing the ge...
A new method for performing a kernel principal component analysis is proposed. By kernelizing the ge...
We investigate an extension of Hebbian learning in a principal component analysis network which has ...
In this paper, we propose a new learning (SPRM) called the Hebbian Learning Subspace Method (HLSM). ...
Abstract: This report consists of three chapters that together give a view of how the very simple st...
The Hebbian neural learning algorithm that implements Principal Component Analysis (PCA) can be exte...
In this paper, we review an extension of the learning rules in a Principal Component Analysis networ...
Principal Component Analysis (PCA) is perhaps the most prominent learning tool for dimensionality re...
We present a class of neural networks algorithms based on simple Hebbian learning which allow the fi...
Principal components analysis allows to reduce the dimensionality of a dataset in which there are la...
AbstractThe functional principal components analysis (PCA) involves new considerations on the mechan...
We present a novel method based on a recently proposed extension to a negative feedback network whic...