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Optimising transparency, reliability and replicability: annotation principles and inter-coder agreement in the quantification of evaluative expressions

Author

  • Matteo Fuoli
  • Charlotte Hommerberg

Summary, in English

Manual corpus annotation facilitates exhaustive and detailed corpus-based analyses of evaluation that would not be possible with purely automatic techniques. However, manual annotation is a complex and subjective process. Most studies adopting this approach have paid insufficient attention to the methodological challenges involved in manually annotating evaluation - especially concerning transparency, reliability and replicability. This article illustrates a procedure for annotating evaluative expressions in text that facilitates more transparent, reliable and replicable analyses. The method is demonstrated through a case study analysis of APPRAISAL (Martin and White, 2005) in a small-size specialised corpus of CEO letters published by the British energy company, BP, and four competitors before and after the Deepwater Horizon oil spill of 2010. Drawing on Fuoli and Paradis's (2014) model of trust-repair discourse, we examine how ATTITUDE and ENGAGEMENT resources are strategically deployed by BP's CEO in the attempt to repair stakeholders' trust after the accident.

Department/s

Publishing year

2015

Language

English

Pages

315-349

Publication/Series

Corpora

Volume

10

Issue

3

Document type

Journal article

Publisher

Edinburgh University Press

Topic

  • General Language Studies and Linguistics

Keywords

  • evaluation
  • APPRAISAL theory
  • manual corpus annotation
  • inter-coder agreement
  • reliability
  • transparency
  • replicability
  • trust-repair
  • BP Deepwater Horizon oil spill

Status

Published

ISBN/ISSN/Other

  • ISSN: 1755-1676