ALEVS: Active Learning by Statistical Leverage Sampling

15 Jul 2015Cem OrhanÖznur Taştan

Active learning aims to obtain a classifier of high accuracy by using fewer label requests in comparison to passive learning by selecting effective queries. Many active learning methods have been developed in the past two decades, which sample queries based on informativeness or representativeness of unlabeled data points... (read more)

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