International audience ; Feature maximization is a cluster quality metric which favors clusters with maximum feature representation as regard to their associated data. This metric has already been successfully exploited, altogether, for defining unbiased clustering quality indexes, for efficient cluster labeling, as well as for substituting to distance in the clustering process, like in the IGNGF incremental clustering method. In this paper we go one step further showing that a straightforward adaptation of such metric can provide a highly efficient feature selection and feature contrasting model in the context of supervised classification. We more especially show that this technique can enhance the performance of classification methods whi...
Abstract: Feature selection is the process of identifying a subset of the most useful features that ...
The amount of information in the form of features and variables avail-able to machine learning algor...
Dimensionality reduction of the problem space through detection and removal of variables, contributi...
International audienceFeature maximization is a cluster quality metric which favors clusters with ma...
This paper deals with a new feature selection and feature contrasting approach for classification of...
International audienceThis paper focuses on using feature salience to evaluate the quality of a part...
One of the challenges in data mining is the dimensionality of data, which is often very high and pre...
MasterAlternative clustering algorithms target finding alternative groupings of a dataset on which t...
Application of a feature selection algorithm to a textual data set can improve the performance of so...
In this paper, a supervised feature selection approach is presented, which is based on metric applie...
The feature selection represents a key step in mining high-dimensional data: the significance of fea...
Feature selection has been extensively applied in statistical pattern recognition as a mechanism for...
Feature selection is an important research area that seeks to eliminate unwanted features from datas...
Abstract- A Feature selection for the high dimensional data clustering is a difficult problem becaus...
Abstract: Feature set extraction from raw dataset is always an interesting and important research is...
Abstract: Feature selection is the process of identifying a subset of the most useful features that ...
The amount of information in the form of features and variables avail-able to machine learning algor...
Dimensionality reduction of the problem space through detection and removal of variables, contributi...
International audienceFeature maximization is a cluster quality metric which favors clusters with ma...
This paper deals with a new feature selection and feature contrasting approach for classification of...
International audienceThis paper focuses on using feature salience to evaluate the quality of a part...
One of the challenges in data mining is the dimensionality of data, which is often very high and pre...
MasterAlternative clustering algorithms target finding alternative groupings of a dataset on which t...
Application of a feature selection algorithm to a textual data set can improve the performance of so...
In this paper, a supervised feature selection approach is presented, which is based on metric applie...
The feature selection represents a key step in mining high-dimensional data: the significance of fea...
Feature selection has been extensively applied in statistical pattern recognition as a mechanism for...
Feature selection is an important research area that seeks to eliminate unwanted features from datas...
Abstract- A Feature selection for the high dimensional data clustering is a difficult problem becaus...
Abstract: Feature set extraction from raw dataset is always an interesting and important research is...
Abstract: Feature selection is the process of identifying a subset of the most useful features that ...
The amount of information in the form of features and variables avail-able to machine learning algor...
Dimensionality reduction of the problem space through detection and removal of variables, contributi...