Dimensionality Reduction Methods: Comparative Analysis of methods PCA, PPCA and KPCA

 

Gorde:
Xehetasun bibliografikoak
Egilea: Arroyo-Hernández, Jorge
Formatua: artículo original
Egoera:Versión publicada
Argitaratze data:2016
Deskribapena:The dimensionality reduction methods are algorithms mapping the set of data in subspaces derived from the original space, of fewer dimensions, that allow a description of the data at a lower cost. Due to their importance, they are widely used in processes associated with learning machine. This article presents a comparative analysis of PCA, PPCA and KPCA dimensionality reduction methods. A reconstruction experiment of worm-shape data was performed through structures of landmarks located in the body contour, with methods having different number of main components. The results showed that all methods can be seen as alternative processes. Nevertheless, thanks to the potential for analysis in the features space and the method for calculation of its preimage presented, KPCA offers a better method for recognition process and pattern extraction
Herria:Portal de Revistas UNA
Erakundea:Universidad Nacional de Costa Rica
Repositorio:Portal de Revistas UNA
Hizkuntza:Español
OAI Identifier:oai:www.revistas.una.ac.cr:article/7586
Sarrera elektronikoa:https://www.revistas.una.ac.cr/index.php/uniciencia/article/view/7586
Gako-hitza:Dimensionality Reduction
Points Clouds
Preimage problem
Reducción de dimensionalidad
nube de datos
problema de la preimagen.