Scatter-matrix-based class separability is a simple and efficient feature selection criterion in the literature. However, the conventional trace-based formulation does not take feature redundancy into account and is prone to selecting a set of discriminative but mutually redundant features. In this brief, we first theoretically prove that in the context of this trace-based criterion the existence of sufficiently correlated features can always prevent selecting the optimal feature set. Then, on top of this criterion, we propose the redundancy-constrained feature selection (RCFS). To ensure the algorithm's efficiency and scalability, we study the characteristic of the constraints with which the resulted constrained 01 optimization can be effi...
Feature selection is a fundamental problem in machine learning and data mining. The majority of feat...
Abstract—In this paper, we argue that for a C-class classification problem, C 2-class classifiers, e...
We consider the problem of eliminating redundant Boolean features for a given data set, where a feat...
Scatter-matrix-based class separability is a simple and efficient feature selection criterion in the...
International audienceThe goal of feature selection (FS) in machine learning is to find the best sub...
Classification can often benefit from efficient feature selection. However, the presence of linearly...
Feature selection aims to gain relevant features for improved classification performance and remove ...
In feature selection, redundancy is one of the major concerns since the removal of redundancy in dat...
This paper studies sequential forward feature selection that uses the scatter-matrix-based class sep...
This paper studies sequential forward feature selection that uses the scatter-matrix-based class sep...
Spectral feature selection identifies relevant features by measuring their capability of preserving ...
Spectral feature selection identifies relevant features by measuring their capability of preserving ...
The goal of feature selection is to find the optimal subset consisting of m features chosen from the...
Finding relevant subspaces in very high-dimensional data is a challenging task not only for microarr...
Abstract—This paper proposes an unsupervised feature selection method to remove the redundant featur...
Feature selection is a fundamental problem in machine learning and data mining. The majority of feat...
Abstract—In this paper, we argue that for a C-class classification problem, C 2-class classifiers, e...
We consider the problem of eliminating redundant Boolean features for a given data set, where a feat...
Scatter-matrix-based class separability is a simple and efficient feature selection criterion in the...
International audienceThe goal of feature selection (FS) in machine learning is to find the best sub...
Classification can often benefit from efficient feature selection. However, the presence of linearly...
Feature selection aims to gain relevant features for improved classification performance and remove ...
In feature selection, redundancy is one of the major concerns since the removal of redundancy in dat...
This paper studies sequential forward feature selection that uses the scatter-matrix-based class sep...
This paper studies sequential forward feature selection that uses the scatter-matrix-based class sep...
Spectral feature selection identifies relevant features by measuring their capability of preserving ...
Spectral feature selection identifies relevant features by measuring their capability of preserving ...
The goal of feature selection is to find the optimal subset consisting of m features chosen from the...
Finding relevant subspaces in very high-dimensional data is a challenging task not only for microarr...
Abstract—This paper proposes an unsupervised feature selection method to remove the redundant featur...
Feature selection is a fundamental problem in machine learning and data mining. The majority of feat...
Abstract—In this paper, we argue that for a C-class classification problem, C 2-class classifiers, e...
We consider the problem of eliminating redundant Boolean features for a given data set, where a feat...