Sequential Minimal Optimization Algorithm for One-Class Support Vector Machines With Privileged Information
📰 ArXiv cs.AI
arXiv:2606.22210v1 Announce Type: cross Abstract: One of the powerful techniques in data modeling is accounting for features that are available at the training stage, but are not available when the trained model is used to classify or predict test data -- the Learning Using Privileged Information paradigm (LUPI). Sequential Minimal Optimization (SMO) methods have been developed for supervised Support Vector Machines (SVM), unsupervised one-class SVM, and SVM with privileged information (SVM+). T
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