Publication | Closed Access
Bayesian Trigonometric Support Vector Classifier
31
Citations
21
References
2003
Year
Support Vector MachineClassification MethodEngineeringMachine LearningData ScienceData MiningPattern RecognitionBayesian TechniquesPredictive AnalyticsAutomatic ClassificationKnowledge DiscoveryBayesian FrameworkStatistical InferenceComputer ScienceStatistical Learning TheoryStatisticsSupervised LearningSupport Vector Classification
This letter describes Bayesian techniques for support vector classification. In particular, we propose a novel differentiable loss function, called the trigonometric loss function, which has the desirable characteristic of natural normalization in the likelihood function, and then follow standard gaussian processes techniques to set up a Bayesian framework. In this framework, Bayesian inference is used to implement model adaptation, while keeping the merits of support vector classifier, such as sparseness and convex programming. This differs from standard gaussian processes for classification. Moreover, we put forward class probability in making predictions. Experimental results on benchmark data sets indicate the usefulness of this approach.
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