Kernel Learning by Spectral Representation and Gaussian Mixtures
2023; Multidisciplinary Digital Publishing Institute; Volume: 13; Issue: 4 Linguagem: Inglês
10.3390/app13042473
ISSN2076-3417
AutoresLuis Ricardo Pena-Llamas, Ramón O. Guardado-Medina, Arturo Garcia, Andres Méndez-Vázquez,
Tópico(s)Image Retrieval and Classification Techniques
ResumoOne of the main tasks in kernel methods is the selection of adequate mappings into higher dimension in order to improve class classification. However, this tends to be time consuming, and it may not finish with the best separation between classes. Therefore, there is a need for better methods that are able to extract distance and class separation from data. This work presents a novel approach for learning such mappings by using locally stationary kernels, spectral representations and Gaussian mixtures.
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