Comparar métodos
Revisa los métodos seleccionados uno junto a otro; las filas que difieren aparecen resaltadas.
| PCA con kernel× | Incrustación Lineal Local (LLE)× | |
|---|---|---|
| Campo | Aprendizaje automático | Aprendizaje automático |
| Familia≠ | Latent structure | Machine learning |
| Año de origen≠ | 1998 | 2000 |
| Autor original≠ | Schölkopf, B.; Smola, A. J.; Müller, K.-R. | Sam Roweis & Lawrence Saul |
| Tipo≠ | Nonlinear dimensionality reduction via kernel trick | Nonlinear manifold dimensionality reduction |
| Fuente seminal≠ | Schölkopf, B., Smola, A. J., & Müller, K.-R. (1998). Nonlinear component analysis as a kernel eigenvalue problem. Neural Computation, 10(5), 1299–1319. DOI ↗ | Roweis, S. T., & Saul, L. K. (2000). Nonlinear dimensionality reduction by locally linear embedding. Science, 290(5500), 2323–2326. DOI ↗ |
| Alias | KPCA, kernel PCA, nonlinear PCA via kernel trick, kernel eigenvalue decomposition | LLE, manifold learning, nonlinear dimensionality reduction, yerel doğrusal gömme |
| Relacionados≠ | 5 | 3 |
| Resumen≠ | Kernel Principal Component Analysis (Kernel PCA) is a nonlinear dimensionality-reduction method introduced by Bernhard Schölkopf, Alexander Smola, and Klaus-Robert Müller in 1997–1998. It extends classical linear PCA to curved, non-linear data manifolds by implicitly mapping input data into a high-dimensional feature space via a kernel function, then performing standard PCA in that space — all without ever computing the mapping explicitly. | Locally linear embedding, introduced by Sam Roweis and Lawrence Saul in 2000, is a manifold-learning method for nonlinear dimensionality reduction. It assumes that although data may curve through a high-dimensional space, each point and its neighbours lie approximately on a flat patch. LLE captures each point as a weighted combination of its neighbours and then finds a low-dimensional layout that preserves those same local relationships, unrolling curved structure into a faithful low-dimensional map. |
| ScholarGateConjunto de datos ↗ |
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