Recomienda este artículo a tus amigos:
Dimensionality Reduction for Classification with High-dimensional Data Siva Tian
Dimensionality Reduction for Classification with High-dimensional Data
Siva Tian
High-dimensional data refers to data with a large number of variables. Classifying these data is a difficult problem because the enormous number of variables poses challenges to conventional classification methods and renders many classical techniques impractical. A natural solution is to add a dimensionality reduction step before a classification technique is applied. We Propose three methods to deal with this problem: a simulated annealing (SA) based method, a multivariate adaptive stochastic search (MASS) method, and a functional adaptive classification (FAC) method. The third method considers functional predictors. They all utilize stochastic search algorithms to select a handful of optimal transformation directions from a large number of random directions in each iteration. These methods are designed to mimic variable selection type methods, such as the Lasso, or variable combination methods, such as PCA, or a method that combines the two approaches. We demonstrate the strengths of our methods on an extensive range of simulation and real-world studies.
| Medios de comunicación | Libros Paperback Book (Libro con tapa blanda y lomo encolado) |
| Publicado | 25 de agosto de 2010 |
| ISBN13 | 9783639288681 |
| Editores | VDM Verlag Dr. Müller |
| Páginas | 124 |
| Dimensiones | 226 × 7 × 150 mm · 190 g |
| Lengua | Inglés |