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Published January 10, 2010 | public
Journal Article

Progressive refinement for support vector machines

Abstract

Support vector machines (SVMs) have good accuracy and generalization properties, but they tend to be slow to classify new examples. In contrast to previous work that aims to reduce the time required to fully classify all examples, we present a method that provides the best-possible classification given a specific amount of computational time. We construct two SVMs: a "full" SVM that is optimized for high accuracy, and an approximation SVM (via reduced-set or subset methods) that provides extremely fast, but less accurate, classifications. We apply the approximate SVM to the full data set, estimate the posterior probability that each classification is correct, and then use the full SVM to reclassify items in order of their likelihood of misclassification. Our experimental results show that this method rapidly achieves high accuracy, by selectively devoting resources (reclassification) only where needed. It also provides the first such progressive SVM solution that can be applied to multiclass problems.

Additional Information

© 2010 Springer. Received: 28 June 2007; accepted: 31 August 2009; published online: 14 October 2009. Responsible editor: Geoffrey Webb. We wish to thank Dennis DeCoste, Robert Granat, and the anonymous reviewers for their helpful comments and suggestions. The research described in this paper was performed at the Jet Propulsion Laboratory, California Institute of Technology, under a contract with the National Aeronautics and Space Administration. We gratefully acknowledge the support of a grant from the NASA Advanced Information Systems Technology program and grant #IIS-0705681 from the National Science Foundation. The MISR remote-sensing data was obtained from the Langley Atmospheric Science Data Center.

Additional details

Created:
August 21, 2023
Modified:
October 19, 2023