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Low rank updated LS-SVM classifiers for fast variable selection. | LitMetric

Low rank updated LS-SVM classifiers for fast variable selection.

Neural Netw

Department of Electrical Engineering (ESAT-SCD division), Katholieke Universiteit Leuven, B-3001 Leuven, Belgium.

Published: July 2008

AI Article Synopsis

  • LS-SVM classifiers utilize kernel methods based on linear equations, and this study introduces low rank modifications to enhance variable selection efficiency.
  • By relating the addition or removal of variables to low rank changes in the LS-SVM’s kernel matrix, this approach allows for quick updates to the model without needing to recompute from scratch.
  • When tested on benchmark datasets, the proposed method demonstrates lower computational complexity and improved stability in generalization error compared to other variable selection algorithms.

Article Abstract

Least squares support vector machine (LS-SVM) classifiers are a class of kernel methods whose solution follows from a set of linear equations. In this work we present low rank modifications to the LS-SVM classifiers that are useful for fast and efficient variable selection. The inclusion or removal of a candidate variable can be represented as a low rank modification to the kernel matrix (linear kernel) of the LS-SVM classifier. In this way, the LS-SVM solution can be updated rather than being recomputed, which improves the efficiency of the overall variable selection process. Relevant variables are selected according to a closed form of the leave-one-out (LOO) error estimator, which is obtained as a by-product of the low rank modifications. The proposed approach is applied to several benchmark data sets as well as two microarray data sets. When compared to other related algorithms used for variable selection, simulations applying our approach clearly show a lower computational complexity together with good stability on the generalization error.

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Source
http://dx.doi.org/10.1016/j.neunet.2007.12.053DOI Listing

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