Learning the kernel matrix with semidefinite programming


Autoria(s): Lanckriet, G. R. G.; Cristianini, N.; Bartlett, P. L.; El Ghaoui, L.; Jordan, M. I.
Data(s)

2004

Resumo

Kernel-based learning algorithms work by embedding the data into a Euclidean space, and then searching for linear relations among the embedded data points. The embedding is performed implicitly, by specifying the inner products between each pair of points in the embedding space. This information is contained in the so-called kernel matrix, a symmetric and positive semidefinite matrix that encodes the relative positions of all points. Specifying this matrix amounts to specifying the geometry of the embedding space and inducing a notion of similarity in the input space - classical model selection problems in machine learning. In this paper we show how the kernel matrix can be learned from data via semidefinite programming (SDP) techniques. When applied to a kernel matrix associated with both training and test data this gives a powerful transductive algorithm -using the labeled part of the data one can learn an embedding also for the unlabeled part. The similarity between test points is inferred from training points and their labels. Importantly, these learning problems are convex, so we obtain a method for learning both the model class and the function without local minima. Furthermore, this approach leads directly to a convex method for learning the 2-norm soft margin parameter in support vector machines, solving an important open problem.

Identificador

http://eprints.qut.edu.au/43934/

Publicador

Massachusetts Institute of Technology Press

Relação

http://jmlr.csail.mit.edu/papers/volume5/lanckriet04a/lanckriet04a.pdf

Lanckriet, G. R. G., Cristianini, N., Bartlett, P. L., El Ghaoui, L., & Jordan, M. I. (2004) Learning the kernel matrix with semidefinite programming. Journal of Machine Learning Research, 5, pp. 27-72.

Fonte

Faculty of Science and Technology; Mathematical Sciences

Palavras-Chave #080100 ARTIFICIAL INTELLIGENCE AND IMAGE PROCESSING #170200 COGNITIVE SCIENCE #Convex optimization #Kernel methods #Learning kernels #Model selection #Semidefinite programming #Support vector machines #Transduction #Data reduction #Eigenvalues and eigenfunctions #Geometry #Learning algorithms #Learning systems #Mathematical programming #Optimization #Parameter estimation #Problem solving #Matrix algebra #OAVJ
Tipo

Journal Article