One of the main tasks in exploratory data analysis is to create an appropriate representation for complex data. In this paper, the problem of creating a representation for observations lying on a low-dimensional manifold em-bedded in high-dimensional coordinates is considered. We propose a modification of the Self-organizing map (SOM) algorithm that is able to learn the manifold structure in the high-dimensional observation coordinates. Any manifold learning algorithm may be incorporated to the proposed training strategy to guide the map onto the manifold surface instead of becoming trapped in local minima. In this paper, the Locally linear embedding algorithm is adopted. We use the proposed method successfully on several data sets with man...
There has been a renewed interest in understanding the structure of high dimensional data set based ...
Manifold learning methods are promising data analysis tools. However, if we locate a new test sample...
This paper proposes an extension of the self-organizing map (SOM), in which the mapping objects them...
We present an algorithm, Hierarchical ISOmetric Self-Organizing Map (H-ISOSOM), for a concise, organ...
Manifold learning is a popular recent approach to nonlinear dimensionality reduction. Algorithms for...
The problem of dimensionality reduction arises in many fields of information processing, including m...
Locally linear embedding is an effective nonlinear dimensionality reduction method for exploring the...
Dimensionality reduction is required to produce visualisations of high dimensional data. In this fra...
The 6th International Workshop on Self-Organizing Maps (WSOM), 2007 Bielefeld University, Bielefeld,...
This paper was submitted by the author prior to final official version. For official version please ...
In this brief, we present a novel supervised manifold learning framework dubbed hybrid manifold embe...
International audienceSupervised manifold learning methods learn data representations by preserving ...
Abstract Raw data sets taken with various capturing devices are usually multidimensional and need to...
Competitive Hebbian Learning (CHL) (Martinetz, 1993) is a simple and elegant method for estimating t...
We study the extraction of nonlinear data models in high dimensional spaces with modified self-organ...
There has been a renewed interest in understanding the structure of high dimensional data set based ...
Manifold learning methods are promising data analysis tools. However, if we locate a new test sample...
This paper proposes an extension of the self-organizing map (SOM), in which the mapping objects them...
We present an algorithm, Hierarchical ISOmetric Self-Organizing Map (H-ISOSOM), for a concise, organ...
Manifold learning is a popular recent approach to nonlinear dimensionality reduction. Algorithms for...
The problem of dimensionality reduction arises in many fields of information processing, including m...
Locally linear embedding is an effective nonlinear dimensionality reduction method for exploring the...
Dimensionality reduction is required to produce visualisations of high dimensional data. In this fra...
The 6th International Workshop on Self-Organizing Maps (WSOM), 2007 Bielefeld University, Bielefeld,...
This paper was submitted by the author prior to final official version. For official version please ...
In this brief, we present a novel supervised manifold learning framework dubbed hybrid manifold embe...
International audienceSupervised manifold learning methods learn data representations by preserving ...
Abstract Raw data sets taken with various capturing devices are usually multidimensional and need to...
Competitive Hebbian Learning (CHL) (Martinetz, 1993) is a simple and elegant method for estimating t...
We study the extraction of nonlinear data models in high dimensional spaces with modified self-organ...
There has been a renewed interest in understanding the structure of high dimensional data set based ...
Manifold learning methods are promising data analysis tools. However, if we locate a new test sample...
This paper proposes an extension of the self-organizing map (SOM), in which the mapping objects them...