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Date: 2014-07-10 21:47:00Support vector machine Linear classifier Function Loss function Structured SVM Statistics Statistical classification Machine learning | Optimization of Robust Loss Functions for Weakly-Labeled Image Taxonomies: An ImageNet Case Study Julian J. McAuley1 , Arnau Ramisa2 , and Tib´erio S. Caetano1 1Add to Reading ListSource URL: cseweb.ucsd.eduDownload Document from Source WebsiteFile Size: 3,44 MBShare Document on Facebook |
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