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Learning to Recognize Discontiguous Entities

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This paper focuses on the study of recognizing discontiguous entities. Motivated by a previous work, we propose to use a novel hypergraph representation to jointly encode discontiguous entities of unbounded length, which can overlap with one another. To compare with existing approaches, we first formally introduce the notion of model ambiguity, which defines the difficulty level of interpreting the outputs of a model, and then formally analyze the theoretical advantages of our model over previous existing approaches based on linear-chain CRFs. Our empirical results also show that our model is able to achieve significantly better results when evaluated on standard data with many discontiguous entities.

Aldrian Obaja Muis, Wei Lu• 2018

Related benchmarks

TaskDatasetResultRank
Named Entity RecognitionACE 2005 (test)
F1 Score61.3
58
Named Entity RecognitionGENIA (test)
F1 Score70.8
34
Discontinuous Named Entity RecognitionCADEC (test)
Precision72.1
19
Discontinuous Named Entity RecognitionShARe 13 (test)
F1-score70.3
17
Discontinuous Named Entity RecognitionShARe14 (test)
Precision79.1
15
Named Entity RecognitionCLEF-Dis 2016 (test)
F1 Score0.528
7
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