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Statistical classification / Support vector machine / Kernel methods / Cross-validation / Feature selection / Kullback–Leibler divergence / Boosting methods for object categorization / Statistics / Machine learning / Model selection
Statistical classification
Support vector machine
Kernel methods
Cross-validation
Feature selection
Kullback–Leibler divergence
Boosting methods for object categorization
Statistics
Machine learning
Model selection

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