International audienceSimultaneous selection of the number of clusters and of a relevant subset of features is part of data mining challenges. A new approach is proposed to address this difficult issue. It takes benefits of both two-levels clustering approaches and wrapper features selection algorithms. On the one hands, the former enhances the robustness to outliers and to reduce the running time of the algorithm. On the other hands, wrapper features selection (FS) approaches are known to given better results than filter FS methods because the algorithm that uses the data is taken into account. First, a Self-Organizing Maps (SOM), trained using the original data sets, is clustered using k-means and the Davies-Bouldin index to determinate t...
Abstract: The K-means algorithm is a popular data-clustering algorithm. However, one of its drawback...
Processing applications with a large number of dimensions has been a challenge to the KDD community....
This paper introduces concepts and algorithms of feature selection, surveys existing feature selecti...
The feature selection represents a key step in mining high-dimensional data: the significance of fea...
The feature selection represents a key step in mining high-dimensional data: the significance of fea...
The feature selection represents a key step in mining high-dimensional data: the significance of fea...
The feature selection represents a key step in mining high-dimensional data: the significance of fea...
The feature selection represents a key step in mining high-dimensional data: the significance of fea...
The feature selection represents a key step in mining high-dimensional data: the significance of fea...
MasterAlternative clustering algorithms target finding alternative groupings of a dataset on which t...
Abstract — The major idea of feature selection is to choose a subset of key variables by eliminating...
Data mining, the extraction of hidden predictive information from large databases, is a powerful new...
Abstract: Feature selection is the process of identifying a subset of the most useful features that ...
In HD dataset, feature selection involves identifying the subset of good features by using clusterin...
Abstract: Feature set extraction from raw dataset is always an interesting and important research is...
Abstract: The K-means algorithm is a popular data-clustering algorithm. However, one of its drawback...
Processing applications with a large number of dimensions has been a challenge to the KDD community....
This paper introduces concepts and algorithms of feature selection, surveys existing feature selecti...
The feature selection represents a key step in mining high-dimensional data: the significance of fea...
The feature selection represents a key step in mining high-dimensional data: the significance of fea...
The feature selection represents a key step in mining high-dimensional data: the significance of fea...
The feature selection represents a key step in mining high-dimensional data: the significance of fea...
The feature selection represents a key step in mining high-dimensional data: the significance of fea...
The feature selection represents a key step in mining high-dimensional data: the significance of fea...
MasterAlternative clustering algorithms target finding alternative groupings of a dataset on which t...
Abstract — The major idea of feature selection is to choose a subset of key variables by eliminating...
Data mining, the extraction of hidden predictive information from large databases, is a powerful new...
Abstract: Feature selection is the process of identifying a subset of the most useful features that ...
In HD dataset, feature selection involves identifying the subset of good features by using clusterin...
Abstract: Feature set extraction from raw dataset is always an interesting and important research is...
Abstract: The K-means algorithm is a popular data-clustering algorithm. However, one of its drawback...
Processing applications with a large number of dimensions has been a challenge to the KDD community....
This paper introduces concepts and algorithms of feature selection, surveys existing feature selecti...