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Wang, 2017 - Google Patents

Consistency and convergence rate for nearest subspace classifier

Wang, 2017

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Document ID
726063095420292842
Author
Wang Y
Publication year
Publication venue
Information and Inference: A Journal of the IMA

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Snippet

The nearest subspace classifier (NSS) finds an estimation of the underlying subspace within each class and assigns data points to the class that corresponds to its nearest subspace. This paper mainly studies how well NSS can be generalized to new samples. It is proved …
Continue reading at mathgrace.github.io (PDF) (other versions)

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