Friel, Thilo-Thomas and Harrison, R. (1998) Linear Programming Support Vector Machines for Pattern Classification and Regression Estimation: and The SR Algorithm: Improving Speed and Tightness of VC Bounds in SV Algorithms. Research Report. ACSE Research Report 706 . Department of Automatic Control and Systems Engineering
Abstract
Three novel algorithms are presented; the linear programming (LP) machine for pattern classification, the LP machine for regression estimation and the set-reduction (SR) algorithm. The LP machine is a learning machine which achieves solutions as good as the SV machine by only maximising a linear cost-function (SV machine are based on quadratic programming). The set-reduction algorithm improves the speed and accuracy of LP machines, SV machines and other related algorithms. An LP machines's decisions are optimal in the sense that it implements Vapnick's (Vapnick and Chervonekis in 1979, Vapnick 1995) structural risk minimisation (SRM) principle. The LP machine has a number of attractive and interesting properties like a high generalisation ability, fast learning based on linear optimisation, capacity control, and a self organisation property. The SR algorithm is an efficient method to improve speed in a LP machine, SV machine and related algorithms, VC bounds are known to be loose bounds. The SR algorithm allows to construct optimal support vector machines by determining the necessary and sufficient number of support patterns. The algorithm does also give tighter VC bounds (for bounds of which are a function of the number of support patterns)
Metadata
Item Type: | Monograph |
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Authors/Creators: |
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Copyright, Publisher and Additional Information: | The Department of Automatic Control and Systems Engineering research reports offer a forum for the research output of the academic staff and research students of the Department at the University of Sheffield. Papers are reviewed for quality and presentation by a departmental editor. However, the contents and opinions expressed remain the responsibility of the authors. Some papers in the series may have been subsequently published elsewhere and you are advised to cite the later published version in these instances. |
Keywords: | Linear Programming, LP Machines, SR Algorithm, Support Vector Machines. Learning Machines, Structural Risk Minimisation, Computational Learning Theory, VC Theory, Supervised Learning, Pattern Classification, Regression Estimation, Non-Linear Component Analysis, Linear Components in Mercer-Kernel Space |
Dates: |
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Institution: | The University of Sheffield |
Academic Units: | The University of Sheffield > Faculty of Engineering (Sheffield) > Department of Automatic Control and Systems Engineering (Sheffield) > ACSE Research Reports |
Depositing User: | MRS ALISON THERESA BARNETT |
Date Deposited: | 26 Nov 2014 11:58 |
Last Modified: | 27 Oct 2016 00:50 |
Status: | Published |
Publisher: | Department of Automatic Control and Systems Engineering |
Series Name: | ACSE Research Report 706 |
Open Archives Initiative ID (OAI ID): | oai:eprints.whiterose.ac.uk:81932 |