Evaluating active learning methods for annotating semantic predications
JAMIA Open2018Vol. 1(2), pp. 275–282
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Abstract
Active learning is shown to be effective at reducing annotation costs for filtering incorrect semantic predications from SemMedDB. Our proposed AL method demonstrated promising performance.
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