Journal of the Japan Statistical Society, Japanese Issue
Online ISSN : 2189-1478
Print ISSN : 0389-5602
ISSN-L : 0389-5602
Special Section: Machine Learning and Its Related Fields
Active Learning: Problem Settings and Recent Developments
Hideitsu Hino
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2021 Volume 50 Issue 2 Pages 317-342

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Abstract

In supervised learning, acquiring labeled training data for a predictive model can be very costly, but acquiring a large amount of unlabeled data is often quite easy. Active learning is a method of obtaining predictive models with high precision at a limited cost through the adaptive selection of samples for labeling. This study explains the basic problem settings of active learning and recent research trends. In particular, research on learning acquisition functions to select samples from the data for labeling, theoretical work on active learning algorithms, and stopping criteria for sequential data acquisition are highlighted. Application examples of improved efficiency are introduced for material development and measurement.

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© 2021 Japan Statistical Society
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