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Zeng et al., 2015 - Google Patents

Maximum margin classification based on flexible convex hulls

Zeng et al., 2015

Document ID
14012320787245522344
Author
Zeng M
Yang Y
Zheng J
Cheng J
Publication year
Publication venue
Neurocomputing

External Links

Snippet

Based on defining a flexible convex hull, a maximum margin classification based on flexible convex hulls (MMC-FCH) is presented in this work. The flexible convex hull defined in our work is a class region approximation looser than a convex hull but tighter than an affine hull …
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