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Disease named entity recognition using semisupervised learning and conditional random fields

✍ Scribed by Nichalin Suakkaphong; Zhu Zhang; Hsinchun Chen


Publisher
John Wiley and Sons
Year
2011
Tongue
English
Weight
144 KB
Volume
62
Category
Article
ISSN
1532-2882

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✦ Synopsis


Abstract

Information extraction is an important text‐mining task that aims at extracting prespecified types of information from large text collections and making them available in structured representations such as databases. In the biomedical domain, information extraction can be applied to help biologists make the most use of their digital‐literature archives. Currently, there are large amounts of biomedical literature that contain rich information about biomedical substances. Extracting such knowledge requires a good named entity recognition technique. In this article, we combine conditional random fields (CRFs), a state‐of‐the‐art sequence‐labeling algorithm, with two semisupervised learning techniques, bootstrapping and feature sampling, to recognize disease names from biomedical literature. Two data‐processing strategies for each technique also were analyzed: one sequentially processing unlabeled data partitions and another one processing unlabeled data partitions in a round‐robin fashion. The experimental results showed the advantage of semisupervised learning techniques given limited labeled training data. Specifically, CRFs with bootstrapping implemented in sequential fashion outperformed strictly supervised CRFs for disease name recognition. The project was supported by NIH/NLM Grant R33 LM07299–01, 2002–2005.