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Effective Mining of Protein Interactions


Rinaldi, F; Schneider, G; Kaljurand, K; Clematide, S (2009). Effective Mining of Protein Interactions. In: Third international symposium on languages in biology and medecine (LBM 2009), Jeju Island, South Korea, 8 November 2009 - 10 November 2009, 115-118.

Abstract

The detection of mentions of protein-protein interactions in the scientific literature has recently emerged as a core task in biomedical text mining. We present effective techniques for this task, which have been developed using the IntAct database as a gold standard, and have been evaluated in two text mining competitions.

The detection of mentions of protein-protein interactions in the scientific literature has recently emerged as a core task in biomedical text mining. We present effective techniques for this task, which have been developed using the IntAct database as a gold standard, and have been evaluated in two text mining competitions.

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Additional indexing

Item Type:Conference or Workshop Item (Paper), refereed, original work
Communities & Collections:06 Faculty of Arts > Institute of Computational Linguistics
Dewey Decimal Classification:000 Computer science, knowledge & systems
410 Linguistics
Uncontrolled Keywords:text mining, biomedicine, IntAct, NLP, term grounding, protein-protein interactions
Language:English
Event End Date:10 November 2009
Deposited On:23 Dec 2009 09:23
Last Modified:05 Apr 2016 13:35
Funders:Swiss National Science Fund, grant 100014-118396/1
Official URL:http://lbm2009.biopathway.org/
Permanent URL: https://doi.org/10.5167/uzh-24660

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