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Learning / Statistical classification / Formal sciences / Supervised learning / Kernel methods / Fisher kernel / Pattern recognition / Similarity / Statistics / Machine learning / Artificial intelligence
Date: 2009-10-26 06:52:05
Learning
Statistical classification
Formal sciences
Supervised learning
Kernel methods
Fisher kernel
Pattern recognition
Similarity
Statistics
Machine learning
Artificial intelligence

D1.2_First_Periodic_Report_definitive

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