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Machine learning / Statistics / Learning / Regression analysis / Structured prediction / Support vector machines / Statistical classification / Ordinal regression / Loss function / Mathematical optimization / Convex optimization / Loss functions for classification
Date: 2013-11-15 12:01:19
Machine learning
Statistics
Learning
Regression analysis
Structured prediction
Support vector machines
Statistical classification
Ordinal regression
Loss function
Mathematical optimization
Convex optimization
Loss functions for classification

Large-margin Structured Learning for Link Ranking Stephen H. Bach Bert Huang Lise Getoor Department of Computer Science University of Maryland College Park, MD 20742

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