Basic Research of Statistical Learning with Trust Theory Based Rough Sample
The key theorem of statistical learning theory provides a theoretical basis for the research of Support Vector Machines, and the bounds on the rate of uniform convergence of learning theory describe the generalization ability of learning machine. In contrast to probabilistic sample
in the classical statistical learning theory, trust theory based rough sample is considered in the paper. The key theorem of learning theory with rough sample is proposed and proved, and the bounds on the rate of uniform convergence of learning process with rough sample are given and proved.
They may provide some theoretical bases useful in additional applications of learning theory and Support Vector Machines.
Keywords: MACHINE LEARNING; ROUGH SAMPLE; STATISTICAL LEARNING; SVM; TRUST THEORY
Document Type: Research Article
Publication date: 01 March 2012
- ADVANCED SCIENCE LETTERS is an international peer-reviewed journal with a very wide-ranging coverage, consolidates research activities in all areas of (1) Physical Sciences, (2) Biological Sciences, (3) Mathematical Sciences, (4) Engineering, (5) Computer and Information Sciences, and (6) Geosciences to publish original short communications, full research papers and timely brief (mini) reviews with authors photo and biography encompassing the basic and applied research and current developments in educational aspects of these scientific areas.
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