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Leveraging Non-Specialists for Accurate and Time Efficient AMR Annotation

Proceedings of the LREC 2020 Workshop on "Citizen Linguistics in Language Resource Development"

DOI:10.63317/325migor3bw3

Abstract

Abstract Meaning Representations (AMRs), a syntax-free representation of phrase semantics are useful for capturing the meaning of a phrase and reflecting the relationship between concepts that are referred to. However, annotating AMRs are time consuming and expensive. The existing annotation process requires expertly trained workers who have knowledge of an extensive set of guidelines for parsing phrases. In this paper, we propose a cost-saving two-step process for the creation of a corpus of AMR-phrase pairs for spatial referring expressions. The first step uses non-specialists to perform simple annotations that can be leveraged in the second step to accelerate the annotation performed by the experts. We hypothesize that our process will decrease the cost per annotation and improve consistency across annotators. Few corpora of spatial referring expressions exist and the resulting language resource will be valuable for referring expression comprehension and generation modeling.

Details

Paper ID
lrec2020-ws-cllrd-5
Pages
pp. 35-39
BibKey
martin-etal-2020-leveraging
Editor
N/A
Publisher
European Language Resources Association (ELRA)
ISSN
N/A
ISBN
N/A
Workshop
Proceedings of the LREC 2020 Workshop on "Citizen Linguistics in Language Resource Development"
Location
undefined, undefined
Date
11 May 2020 16 May 2020

Authors

  • MM

    Mary Martin

  • CM

    Cecilia Mauceri

  • MP

    Martha Palmer

  • CH

    Christoffer Heckman

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