This paper studies sequential forward feature selection that uses the scatter-matrix-based class separability measure. We find that by adding a scale factor to each iteration of the conventional sequential selection, a sequential selection that guarantees the global optimum can be attained. We give a thorough theoretical proof of its optimality via a novel geometric interpretation, and this leads to a unified framework including the optimal sequential selection, the conventional sequential selection and the best-individual-N selection. In addition, we show that with our formulation, feature selection can be treated as a linear fractional maximization problem, and it can be efficiently solved by algorithms well developed in the literature. T...
Sequential forward floating search (SFFS) has been well recognized as one of the best feature select...
Copyright © 2017, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rig...
This paper presents a novel method for simultaneous feature selection and classification by incorpor...
This paper studies sequential forward feature selection that uses the scatter-matrix-based class sep...
The goal of feature selection is to find the optimal subset consisting of m features chosen from the...
The classification learning task requires selection of a subset of features to represent patterns to...
Abstract. The feature selection problem in the field of classification consists of obtaining a subse...
Scatter-matrix-based class separability is a simple and efficient feature selection criterion in the...
Scatter-matrix-based class separability is a simple and efficient feature selection criterion in the...
This thesis addresses the problem of feature selection in pattern recognition. A detailed analysis a...
The extraction of optimal features, in a classification sense, is still quite challenging in the con...
Feature selection problems arise in a variety of applications, such as microarray analysis, clinical...
Feature selection aims to select a small subset from the high-dimensional features which can lead to...
The process of placing a separating hyperplane for data classification is normally disconnected from...
We investigated the geometrical complexity of several high-dimensional, small sample classication pr...
Sequential forward floating search (SFFS) has been well recognized as one of the best feature select...
Copyright © 2017, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rig...
This paper presents a novel method for simultaneous feature selection and classification by incorpor...
This paper studies sequential forward feature selection that uses the scatter-matrix-based class sep...
The goal of feature selection is to find the optimal subset consisting of m features chosen from the...
The classification learning task requires selection of a subset of features to represent patterns to...
Abstract. The feature selection problem in the field of classification consists of obtaining a subse...
Scatter-matrix-based class separability is a simple and efficient feature selection criterion in the...
Scatter-matrix-based class separability is a simple and efficient feature selection criterion in the...
This thesis addresses the problem of feature selection in pattern recognition. A detailed analysis a...
The extraction of optimal features, in a classification sense, is still quite challenging in the con...
Feature selection problems arise in a variety of applications, such as microarray analysis, clinical...
Feature selection aims to select a small subset from the high-dimensional features which can lead to...
The process of placing a separating hyperplane for data classification is normally disconnected from...
We investigated the geometrical complexity of several high-dimensional, small sample classication pr...
Sequential forward floating search (SFFS) has been well recognized as one of the best feature select...
Copyright © 2017, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rig...
This paper presents a novel method for simultaneous feature selection and classification by incorpor...