This paper presents an algorithm based on the Growing Self Organizing Map (GSOM) called the High Dimensional Growing Self Organizing Map with Randomness (HDGSOMr) that can cluster massive high dimensional data efficiently. The original GSOM algorithm is altered to accommodate for the issues related to massive high dimensional data. These modifications are presented in detail with experimental results of a massive real-world dataset.<br /
Exploratory data analysis is used to derive insights from large volumes of data. Unsupervised learni...
Background: High-dimensional biomedical data are frequently clustered to identify subgroup structure...
Abstract –A new clustering algorithm based on emergent SOM is proposed. This algorithm, called U*C, ...
The internet age has fuelled an enormous explosion in the amount of information generated by humanit...
Ontrup J, Ritter H. A hierarchically growing hyperbolic self-organizing map for rapid structuring of...
Part 2: AlgorithmsInternational audienceThe paper deals with the high dimensional data clustering pr...
More and more data are produced every day. Some clustering techniques have been developed to automat...
With increasing opportunities for analyzing large data sources, we have noticed a lack of effective ...
In this paper, a new high-dimensional data visualization algorithm based on the Self-Organizing Map ...
This thesis demonstrates that the clustering by Kohonen's Self-Organizing Map algorithm (KSOM) can b...
University of Technology, Sydney. Faculty of Information Technology.NO FULL TEXT AVAILABLE. Access i...
Existing clustering algorithms have difficulty finding the correct locations of potential clusters i...
The Growing Hierarchical Self-Organizing Map (GHSOM) algorithm has shown its potential for performin...
Emerging high-dimensional data mining applications needs to find interesting clusters embeded in arb...
In this paper, we propose a novel algorithm for clustering high dimensional data streams with repres...
Exploratory data analysis is used to derive insights from large volumes of data. Unsupervised learni...
Background: High-dimensional biomedical data are frequently clustered to identify subgroup structure...
Abstract –A new clustering algorithm based on emergent SOM is proposed. This algorithm, called U*C, ...
The internet age has fuelled an enormous explosion in the amount of information generated by humanit...
Ontrup J, Ritter H. A hierarchically growing hyperbolic self-organizing map for rapid structuring of...
Part 2: AlgorithmsInternational audienceThe paper deals with the high dimensional data clustering pr...
More and more data are produced every day. Some clustering techniques have been developed to automat...
With increasing opportunities for analyzing large data sources, we have noticed a lack of effective ...
In this paper, a new high-dimensional data visualization algorithm based on the Self-Organizing Map ...
This thesis demonstrates that the clustering by Kohonen's Self-Organizing Map algorithm (KSOM) can b...
University of Technology, Sydney. Faculty of Information Technology.NO FULL TEXT AVAILABLE. Access i...
Existing clustering algorithms have difficulty finding the correct locations of potential clusters i...
The Growing Hierarchical Self-Organizing Map (GHSOM) algorithm has shown its potential for performin...
Emerging high-dimensional data mining applications needs to find interesting clusters embeded in arb...
In this paper, we propose a novel algorithm for clustering high dimensional data streams with repres...
Exploratory data analysis is used to derive insights from large volumes of data. Unsupervised learni...
Background: High-dimensional biomedical data are frequently clustered to identify subgroup structure...
Abstract –A new clustering algorithm based on emergent SOM is proposed. This algorithm, called U*C, ...