Hosseini B, Hammer B. Interpretable Discriminative Dimensionality Reduction and Feature Selection on the Manifold. Presented at the 2019 European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases (ECML), Würzburg.Dimensionality reduction (DR) on the manifold includes effective methods which project the data from an implicit relational space onto a vectorial space. Regardless of the achievements in this area, these algorithms suffer from the lack of interpretation of the projection dimensions. Therefore, it is often difficult to explain the physical meaning behind the embedding dimensions. In this research, we propose the interpretable kernel DR algorithm (I-KDR) as a new algorithm which maps the ...
In this paper, we propose a nonlinear dimensionality reduction method aimed at extracting lower-dime...
Feature selection and its subsequent dimensionality reduction are significant problems in machine le...
Distance-based methods in machine learning and pattern recognition have to rely on a metric distance...
The subject at hand is the dimensionality reduction of statistical manifolds by the use of informati...
Machine learning methods are used to build models for classification and regression tasks, among oth...
Schulz A, Hammer B. Discriminative Dimensionality Reduction in Kernel Space. In: ESANN2016 Proceedi...
Gisbrecht A, Hofmann D, Hammer B. Discriminative Dimensionality Reduction Mappings. In: Hollmén J, K...
We tackle the problemof extracting explicit discriminative feature representation for manifold featu...
Schulz A, Brinkrolf J, Hammer B. Efficient Kernelization of Discriminative Dimensionality Reduction....
Gisbrecht A, Schulz A, Hammer B. Discriminative Dimensionality Reduction for the Visualization of Cl...
Machine learning is used nowadays to build models for classification and regression tasks, among oth...
The visual interpretation of data is an essential step to guide any further processing or decision m...
For knowledge gaining the dimensionality reduction is a significant technique. It has been observed ...
Hammer B, Gisbrecht A, Schulz A. Applications of discriminative dimensionality reduction. In: Proce...
Schulz A. Discriminative dimensionality reduction: variations, applications, interpretations. Bielef...
In this paper, we propose a nonlinear dimensionality reduction method aimed at extracting lower-dime...
Feature selection and its subsequent dimensionality reduction are significant problems in machine le...
Distance-based methods in machine learning and pattern recognition have to rely on a metric distance...
The subject at hand is the dimensionality reduction of statistical manifolds by the use of informati...
Machine learning methods are used to build models for classification and regression tasks, among oth...
Schulz A, Hammer B. Discriminative Dimensionality Reduction in Kernel Space. In: ESANN2016 Proceedi...
Gisbrecht A, Hofmann D, Hammer B. Discriminative Dimensionality Reduction Mappings. In: Hollmén J, K...
We tackle the problemof extracting explicit discriminative feature representation for manifold featu...
Schulz A, Brinkrolf J, Hammer B. Efficient Kernelization of Discriminative Dimensionality Reduction....
Gisbrecht A, Schulz A, Hammer B. Discriminative Dimensionality Reduction for the Visualization of Cl...
Machine learning is used nowadays to build models for classification and regression tasks, among oth...
The visual interpretation of data is an essential step to guide any further processing or decision m...
For knowledge gaining the dimensionality reduction is a significant technique. It has been observed ...
Hammer B, Gisbrecht A, Schulz A. Applications of discriminative dimensionality reduction. In: Proce...
Schulz A. Discriminative dimensionality reduction: variations, applications, interpretations. Bielef...
In this paper, we propose a nonlinear dimensionality reduction method aimed at extracting lower-dime...
Feature selection and its subsequent dimensionality reduction are significant problems in machine le...
Distance-based methods in machine learning and pattern recognition have to rely on a metric distance...