Retrieving, classifying and analysing narrative commentary in unstructured (glossy) annual reports published as PDF files

Mahmoud El-Haj, Paulo Alves, Paul Rayson, Martin Walker, Steven Young*

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

65 Citations (Scopus)
69 Downloads

Abstract

We provide a methodological contribution by developing, describing and evaluating a method for automatically retrieving and analysing text from digital PDF annual report files published by firms listed on the London Stock Exchange (LSE). The retrieval method retains information on document structure, enabling clear delineation between narrative and financial statement components of reports, and between individual sections within the narratives component. Retrieval accuracy exceeds 95% for manual validations using a random sample of 586 reports. Large-sample statistical validations using a comprehensive sample of reports published by non-financial LSE firms confirm that report length, narrative tone and (to a lesser degree) readability vary predictably with economic and regulatory factors. We demonstrate how the method is adaptable to non-English language documents and different regulatory regimes using a case study of Portuguese reports. We use the procedure to construct new research resources including corpora for commonly occurring annual report sections and a dataset of text properties for over 26,000 U.K. annual reports.
Original languageEnglish
Pages (from-to)6-34
Number of pages29
JournalAccounting and Business Research
Volume50
Issue number1
DOIs
Publication statusPublished - 2 Jan 2020

Keywords

  • Annual reports
  • Narrative reporting
  • Textual analysis
  • Unstructured documents

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