Tight risk bounds for multi-class margin classifiers
- Autores: Maximov Y.1, Reshetova D.2,3
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Afiliações:
- Skolkovo Institute of Science and Technology Skolkovo Innovation Center
- Predictive Modeling and Optimization Department Institute of Information Transmission Problems
- Predictive Modeling and Optimization Laboratory Moscow Institute of Physics and Technology
- Edição: Volume 26, Nº 4 (2016)
- Páginas: 673-680
- Seção: Mathematical Method in Pattern Recognition
- URL: https://bakhtiniada.ru/1054-6618/article/view/194905
- DOI: https://doi.org/10.1134/S105466181604009X
- ID: 194905
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Resumo
We consider a problem of risk estimation for large-margin multi-class classifiers. We propose a novel risk bound for the multi-class classification problem. The bound involves the marginal distribution of the classifier and the Rademacher complexity of the hypothesis class. We prove that our bound is tight in the number of classes. Finally, we compare our bound with the related ones and provide a simplified version of the bound for the multi-class classification with kernel based hypotheses.
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Sobre autores
Yu. Maximov
Skolkovo Institute of Science and Technology Skolkovo Innovation Center
Autor responsável pela correspondência
Email: yurymaximov@iitp.ru
Rússia, Building 3, Moscow, 143026
D. Reshetova
Predictive Modeling and Optimization Department Institute of Information Transmission Problems; Predictive Modeling and Optimization Laboratory Moscow Institute of Physics and Technology
Email: yurymaximov@iitp.ru
Rússia, Bol’shoi Karetnyi 19/1, Moscow, 127051; Kerchenskaya ul. 1a/1, Moscow, 117303
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