Support Vector Regression Machines
Harris Drucker, Christopher J. C. Burges, Linda Kaufman, Alex Smola, Vladimir Vapnik
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Abstract
A new regression technique based on concept of support vectors is introduced. We compare support vector regression with a committee regression technique (bagging) based on regression trees and ridge regression done in feature space. On the basis of these experiments, it is expected that SVR will have advantages in high dimensionality space because SVR optimization does not depend on the dimension&y of input space. This is a longer version of the paper appear in Advances in Neural Processing Systems 9 (proceedings of the 1996 conference)
Topics & Concepts
Support vector machineCurse of dimensionalityRegressionArtificial intelligenceRegression analysisComputer scienceRelevance vector machineFeature vectorLocal regressionPolynomial regressionMachine learningPattern recognition (psychology)MathematicsStatisticsFace and Expression RecognitionNeural Networks and ApplicationsImage Retrieval and Classification Techniques