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Machine learning / Learning / Artificial intelligence / Support vector machine / Kernel method / Semi-supervised learning / Sequential minimal optimization / Anomaly detection / Transduction / Outlier / Supervised learning / Binary classification
Date: 2016-01-04 03:15:06
Machine learning
Learning
Artificial intelligence
Support vector machine
Kernel method
Semi-supervised learning
Sequential minimal optimization
Anomaly detection
Transduction
Outlier
Supervised learning
Binary classification

Learning with Augmented Class by Exploiting Unlabeled Data

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Source URL: cs.nju.edu.cn

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