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An Experimental Comparison of Active Learning Strategies for Partially Labeled Sequences

37

Citations

13

References

2014

Year

Abstract

Active learning (AL) consists of asking human annotators to annotate automatically selected data that are assumed to bring the most benefit in the creation of a classifier. AL allows to learn accurate systems with much less annotated data than what is required by pure supervised learning algorithms, hence limiting the tedious effort of annotating a large collection of data.

References

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