International audienceThe exponential growth of data generates terabytes of very large databases. The growing number of data dimensions and data objects presents tremendous challenges for effective data analysis and data exploration methods and tools. Thus, it becomes crucial to have methods able to construct a condensed description of the properties and structure of data, as well as visualization tools capable of representing the data structure from these condensed descriptions. The purpose of our work described in this paper is to develop a method of describing data from enriched and segmented prototypes using a topological clustering algorithm. We then introduce a visualization tool that can enhance the structure within and between group...
With the much increased capability of data collection and storage in the past decade, data miners ha...
Visualization is helpful for clustering high dimensional data. The goals of visualization in data mi...
International audienceThe objective of this paper is to propose a topological approach of clustering...
International audienceThe exponential growth of data generates terabytes of very large databases. Th...
We discuss topological aspects of cluster analysis and show that inferring the topological structure...
This thesis is about visualizing a kind of data that is trivial to process by computers but difficul...
AbstractIn this work the topic of applying clustering as a knowledge extraction method from real-wor...
Abstract—Many different approaches have been proposed for the challenging problem of visually analyz...
International audienceBackgroundThis paper exploits recent developments in topological data analysis...
The growing neural gas (GNG) is an unsupervised topology learning algorithm that models a data space...
Combining theoretical and practical aspects of topology, this book delivers a comprehensive and self...
Abstract. The Self-Organizing map (SOM), a powerful method for data mining and cluster extraction, i...
This paper applies topological methods to study complex high dimensional data sets by extracting sha...
Visualization is helpful for clustering high dimensional data. The goals of visualization in data mi...
One of the most common operations in exploration and analysis of various kinds of data is clustering...
With the much increased capability of data collection and storage in the past decade, data miners ha...
Visualization is helpful for clustering high dimensional data. The goals of visualization in data mi...
International audienceThe objective of this paper is to propose a topological approach of clustering...
International audienceThe exponential growth of data generates terabytes of very large databases. Th...
We discuss topological aspects of cluster analysis and show that inferring the topological structure...
This thesis is about visualizing a kind of data that is trivial to process by computers but difficul...
AbstractIn this work the topic of applying clustering as a knowledge extraction method from real-wor...
Abstract—Many different approaches have been proposed for the challenging problem of visually analyz...
International audienceBackgroundThis paper exploits recent developments in topological data analysis...
The growing neural gas (GNG) is an unsupervised topology learning algorithm that models a data space...
Combining theoretical and practical aspects of topology, this book delivers a comprehensive and self...
Abstract. The Self-Organizing map (SOM), a powerful method for data mining and cluster extraction, i...
This paper applies topological methods to study complex high dimensional data sets by extracting sha...
Visualization is helpful for clustering high dimensional data. The goals of visualization in data mi...
One of the most common operations in exploration and analysis of various kinds of data is clustering...
With the much increased capability of data collection and storage in the past decade, data miners ha...
Visualization is helpful for clustering high dimensional data. The goals of visualization in data mi...
International audienceThe objective of this paper is to propose a topological approach of clustering...