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An Effective Transition-based Model for Discontinuous NER

28 April 2020
Xiang Dai
Sarvnaz Karimi
Ben Hachey
Cécile Paris
    BDL
    MU
    MedIm
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Abstract

Unlike widely used Named Entity Recognition (NER) data sets in generic domains, biomedical NER data sets often contain mentions consisting of discontinuous spans. Conventional sequence tagging techniques encode Markov assumptions that are efficient but preclude recovery of these mentions. We propose a simple, effective transition-based model with generic neural encoding for discontinuous NER. Through extensive experiments on three biomedical data sets, we show that our model can effectively recognize discontinuous mentions without sacrificing the accuracy on continuous mentions.

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