Supervised attribute relevance detection using cross-comparisons (SARDUX), a recently proposed method for data-driven metric learning, is extended from dimension-weighted Minkowski distances to metrics induced by a data transformation matrix Ω for modeling mutual attribute dependence. Given class labels, parameters of Ω are adapted in such a manner that the inter-class distances are maximized, while the intra-class distances get minimized. This results in an approach similar to Fisher’s linear discriminant analysis (LDA), however, the involved distance matrix gets optimized, and it can be finally utilized for generating discriminatory data mappings that outperform projection pursuit methods with LDA index. The power of matrix-based metric o...
A crucial problem in machine learning is to choose an appropriate representation of data, in a way t...
A crucial problem in machine learning is to choose an appropriate representation of data, in a way t...
Distance-based methods in machine learning and pattern recognition have to rely on a metric distance...
Supervised attribute relevance detection using cross-comparisons (SARDUX), a recently proposed metho...
Supervised attribute relevance detection using cross-comparisons (SARDUX), a recently proposed metho...
Supervised attribute relevance detection using cross-comparisons (SARDUX), a recently proposed metho...
Supervised attribute relevance detection using cross-comparisons (SARDUX), a recently proposed metho...
Supervised attribute relevance detection using cross-comparisons (SARDUX), a recently proposed metho...
A structurally simple, yet powerful, formalism is presented for adapting attribute combinations in h...
A structurally simple, yet powerful, formalism is presented for adapting attribute combinations in h...
Strickert M, Schneider P, Keilwagen J, Villmann T, Biehl M, Hammer B. Discriminatory Data Mapping by...
A structurally simple, yet powerful, formalism is presented for adapting attribute combinations in h...
A structurally simple, yet powerful, formalism is presented for adapting attribute combinations in h...
A structurally simple, yet powerful, formalism is presented for adapting attribute combinations in h...
Linear discriminant analysis has gained extensive applications in supervised classification and dime...
A crucial problem in machine learning is to choose an appropriate representation of data, in a way t...
A crucial problem in machine learning is to choose an appropriate representation of data, in a way t...
Distance-based methods in machine learning and pattern recognition have to rely on a metric distance...
Supervised attribute relevance detection using cross-comparisons (SARDUX), a recently proposed metho...
Supervised attribute relevance detection using cross-comparisons (SARDUX), a recently proposed metho...
Supervised attribute relevance detection using cross-comparisons (SARDUX), a recently proposed metho...
Supervised attribute relevance detection using cross-comparisons (SARDUX), a recently proposed metho...
Supervised attribute relevance detection using cross-comparisons (SARDUX), a recently proposed metho...
A structurally simple, yet powerful, formalism is presented for adapting attribute combinations in h...
A structurally simple, yet powerful, formalism is presented for adapting attribute combinations in h...
Strickert M, Schneider P, Keilwagen J, Villmann T, Biehl M, Hammer B. Discriminatory Data Mapping by...
A structurally simple, yet powerful, formalism is presented for adapting attribute combinations in h...
A structurally simple, yet powerful, formalism is presented for adapting attribute combinations in h...
A structurally simple, yet powerful, formalism is presented for adapting attribute combinations in h...
Linear discriminant analysis has gained extensive applications in supervised classification and dime...
A crucial problem in machine learning is to choose an appropriate representation of data, in a way t...
A crucial problem in machine learning is to choose an appropriate representation of data, in a way t...
Distance-based methods in machine learning and pattern recognition have to rely on a metric distance...