Publication | Open Access
Active learning for clinical text classification: is it better than random sampling?
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Citations
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References
2012
Year
For medical text classification, appropriate active learning algorithms can yield performance comparable to that of passive learning with considerably smaller training sets. In particular, our results suggest that DIV performs better on data with higher diversity and DIST on data with lower uncertainty.
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