AbstractThe concept of quadratic subspace is introduced as a helpful tool for dimension reduction in quadratic discriminant analysis (QDA). It is argued that an adequate representation of the quadratic subspace may lead to better methods for both data representation and classification. Several theoretical results describe the structure of the quadratic subspace, that is shown to contain some of the subspaces previously proposed in the literature for finding differences between the class means and covariances. A suitable assumption of orthogonality between location and dispersion subspaces allows us to derive a convenient reduced version of the full QDA rule. The behavior of these ideas in practice is illustrated with three real data example...
This thesis compares the performance and robustness of five different varities of discriminant analy...
Abstract—In this study, we revisit quadratic discriminant analysis (QDA). For this purpose, we prese...
In multivariate discrimination of two normal populations, the optimal classification procedure is ba...
AbstractThe concept of quadratic subspace is introduced as a helpful tool for dimension reduction in...
Discriminant analysis, including linear discriminant analysis (LDA) and quadratic discriminant analy...
One common objective of many multivariate techniques is to achieve a reduction in dimensionality whi...
One common objective of many multivariate techniques is to achieve a reduction in dimensionality whi...
Sufficient dimension reduction methods provide effective ways to visualize discriminant anal-ysis pr...
Discriminant analysis (DA), including linear discriminant analysis (LDA) and quadratic discriminant ...
AbstractThe quadratic discriminant function is often used to separate two classes of points in a mul...
A dimension reduction method in kernel discriminant analysis is presented, based on the concept of d...
Both predictive discriminant analysis (PDA) and descriptive discriminant analysis (DDA) require a de...
The quadratic discriminant function is often used to separate two classes of points in a multidimens...
Subspace selection approaches are powerful tools in pattern classification and data visualization. O...
Dimension reduction transformations in discriminant analysis are introduced. Their properties, as we...
This thesis compares the performance and robustness of five different varities of discriminant analy...
Abstract—In this study, we revisit quadratic discriminant analysis (QDA). For this purpose, we prese...
In multivariate discrimination of two normal populations, the optimal classification procedure is ba...
AbstractThe concept of quadratic subspace is introduced as a helpful tool for dimension reduction in...
Discriminant analysis, including linear discriminant analysis (LDA) and quadratic discriminant analy...
One common objective of many multivariate techniques is to achieve a reduction in dimensionality whi...
One common objective of many multivariate techniques is to achieve a reduction in dimensionality whi...
Sufficient dimension reduction methods provide effective ways to visualize discriminant anal-ysis pr...
Discriminant analysis (DA), including linear discriminant analysis (LDA) and quadratic discriminant ...
AbstractThe quadratic discriminant function is often used to separate two classes of points in a mul...
A dimension reduction method in kernel discriminant analysis is presented, based on the concept of d...
Both predictive discriminant analysis (PDA) and descriptive discriminant analysis (DDA) require a de...
The quadratic discriminant function is often used to separate two classes of points in a multidimens...
Subspace selection approaches are powerful tools in pattern classification and data visualization. O...
Dimension reduction transformations in discriminant analysis are introduced. Their properties, as we...
This thesis compares the performance and robustness of five different varities of discriminant analy...
Abstract—In this study, we revisit quadratic discriminant analysis (QDA). For this purpose, we prese...
In multivariate discrimination of two normal populations, the optimal classification procedure is ba...