Minimum-Margin Active Learning
We present a new active sampling method we call min-margin which trains multiple learners on bootstrap samples and then chooses the examples to label based on the candidates' minimum margin amongst the bootstrapped models. This extends standard margin sampling in a way that increases its divers...
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Zusammenfassung: | We present a new active sampling method we call min-margin which trains
multiple learners on bootstrap samples and then chooses the examples to label
based on the candidates' minimum margin amongst the bootstrapped models. This
extends standard margin sampling in a way that increases its diversity in a
supervised manner as it arises from the model uncertainty. We focus on the
one-shot batch active learning setting, and show theoretically and through
extensive experiments on a broad set of problems that min-margin outperforms
other methods, particularly as batch size grows. |
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DOI: | 10.48550/arxiv.1906.00025 |