Multiple kernel learning for spectral dimensionality reduction
Abstract:
This work introduces a multiple kernel learning (MKL) approach for selecting and combining different spectralmethods of dimensionality reduction (DR).From a predefined set of kernels representing conventional spectralDRmethods, a generalized kernel is calculated by means of a linear combination of kernel matrices. Coefficients are estimated via a variable ranking aimed at quantifying how much each variable contributes to optimize a variance preservation criterion. All considered kernels are testedwithinakernelPCAframework.Theexperiments are carriedoutover well-known real and artificial data sets. The performance of compared DR approaches is quantified by a scaled version of the average agreement rate between K-ary neighborhoods. Proposed MKL approach exploits the representation ability of every single method to reach a better embedded data for both getting more intelligible visualization and preserving the structure of data.
Año de publicación:
2015
Keywords:
- Dimensionality reduction
- Generalized kernel
- Kernel PCA
- multiple kernel learning
Fuente:

Tipo de documento:
Conference Object
Estado:
Acceso abierto
Áreas de conocimiento:
- Aprendizaje automático
- Optimización matemática
Áreas temáticas:
- Métodos informáticos especiales