This paper was submitted by the author prior to final official version. For official version please see http://hdl.handle.net/1911/70515This work aims to improve the capability of accurate information extraction from high-dimensional data, with a specific neural learning paradigm, the Self-Organizing Map (SOM). The SOM is an unsupervised learning algorithm that can faithfully sense the manifold structure and support supervised learning of relevant information from the data. Yet open problems regarding SOM learning exist. We focus on the following two issues. 1. Evaluation of topology preservation. Topology preservation is essential for SOMs in faithful representation of manifold structure. However, in reality, topology violations are not un...
Dimensionality reduction is required to produce visualisations of high dimensional data. In this fra...
We study the extraction of nonlinear data models in high dimensional spaces with modified self-organ...
According to the manifold hypothesis, natural variations in high-dimensional data lie on or near a l...
One of the main tasks in exploratory data analysis is to create an appropriate representation for co...
Manifold learning methods are promising data analysis tools. However, if we locate a new test sample...
We present an algorithm, Hierarchical ISOmetric Self-Organizing Map (H-ISOSOM), for a concise, organ...
High-dimensional data is increasingly becoming common because of its rich information content that c...
The Self-OrganizingMap (SOM) is a neural network model that performs an ordered projection of a high...
Accepted version of an article from the journal Information Sciences. Definitive published version a...
Self-organizing networks such as neural gas, growing neural gas and many others have been adopted in...
In this paper, we propose a conceptual learning algorithm called the 'self-organizing homotopy (SOH)...
Abstract. The Self-Organizing map (SOM), a powerful method for data mining and cluster extraction, i...
Klanke S. Learning manifolds with the Parametrized Self-Organizing Map and Unsupervised Kernel Regre...
Competitive Hebbian Learning (CHL) (Martinetz, 1993) is a simple and elegant method for estimating t...
This paper proposes an extension of the self-organizing map (SOM), in which the mapping objects them...
Dimensionality reduction is required to produce visualisations of high dimensional data. In this fra...
We study the extraction of nonlinear data models in high dimensional spaces with modified self-organ...
According to the manifold hypothesis, natural variations in high-dimensional data lie on or near a l...
One of the main tasks in exploratory data analysis is to create an appropriate representation for co...
Manifold learning methods are promising data analysis tools. However, if we locate a new test sample...
We present an algorithm, Hierarchical ISOmetric Self-Organizing Map (H-ISOSOM), for a concise, organ...
High-dimensional data is increasingly becoming common because of its rich information content that c...
The Self-OrganizingMap (SOM) is a neural network model that performs an ordered projection of a high...
Accepted version of an article from the journal Information Sciences. Definitive published version a...
Self-organizing networks such as neural gas, growing neural gas and many others have been adopted in...
In this paper, we propose a conceptual learning algorithm called the 'self-organizing homotopy (SOH)...
Abstract. The Self-Organizing map (SOM), a powerful method for data mining and cluster extraction, i...
Klanke S. Learning manifolds with the Parametrized Self-Organizing Map and Unsupervised Kernel Regre...
Competitive Hebbian Learning (CHL) (Martinetz, 1993) is a simple and elegant method for estimating t...
This paper proposes an extension of the self-organizing map (SOM), in which the mapping objects them...
Dimensionality reduction is required to produce visualisations of high dimensional data. In this fra...
We study the extraction of nonlinear data models in high dimensional spaces with modified self-organ...
According to the manifold hypothesis, natural variations in high-dimensional data lie on or near a l...