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Unsupervised Domain Adaptation for Clinical Negation Detection

2017-08-01WS 2017Unverified0· sign in to hype

Timothy Miller, Steven Bethard, Hadi Amiri, Guergana Savova

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Abstract

Detecting negated concepts in clinical texts is an important part of NLP information extraction systems. However, generalizability of negation systems is lacking, as cross-domain experiments suffer dramatic performance losses. We examine the performance of multiple unsupervised domain adaptation algorithms on clinical negation detection, finding only modest gains that fall well short of in-domain performance.

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