Picking groups instead of samples: A close look at Static Pool-based Meta-Active Learning

11/01/2019
by   Ignasi Mas, et al.
0

Active Learning techniques are used to tackle learning problems where obtaining training labels is costly. In this work we use Meta-Active Learning to learn to select a subset of samples from a pool of unsupervised input for further annotation. This scenario is called Static Pool-based Meta- Active Learning. We propose to extend existing approaches by performing the selection in a manner that, unlike previous works, can handle the selection of each sample based on the whole selected subset.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset