Exploring Data Visualisations: An Analytical Framework Based on Dimensional Components of Data Artefacts in Journalism
Open Access
- 24 August 2021
- journal article
- research article
- Published by Taylor & Francis Ltd in Digital Journalism
- Vol. 11 (9), 1641-1663
- https://doi.org/10.1080/21670811.2021.1957965
Abstract
This study introduces a synthesised framework for the analysis of data visualisations in the news. Through a close examination of seminal content analyses, their methodologies and findings, this article proposes a framework that consolidates dimensional components of data visualisations previously scattered across this body of research. To transition from incidental and essentialist examinations of visual data artefacts towards a systematic and theory-informed exploration, we consider the diagrammatic dimensions of data visualisations. The offered synthesized framework can serve as a starting point for both theory-infused descriptive purposes as well as more theory-guided explorations. The framework is put to the test by analysing 185 visualisations drawn from award-winning data stories. Findings generated through the application of the framework highlight the varied composition of components of data visualisations, though certain combinations of components are prevalent, leading to static categorical comparisons or interactive spatial localization. After all, data artefacts can be understood as problem-posing elements that are the outcome of diagrammatic thinking that journalists employ to communicate claims.Keywords
This publication has 35 references indexed in Scilit:
- Unravelling Data JournalismJournalism Practice, 2016
- Small Departures, Big Continuities?Journalism Studies, 2015
- Preserving news apps present huge challengesNewspaper Research Journal, 2015
- Data journalism’s actors, practices and skills: A case study from QuebecJournalism, 2015
- Data journalism in the UK: a preliminary analysis of form and contentJournal of Media Practice, 2015
- Data-Driven Revelation?Digital Journalism, 2014
- Clarifying Journalism’s Quantitative TurnDigital Journalism, 2014
- Rethinking ‘big data’ as visual knowledge: the sublime and the diagrammatic in data visualisationVisual Studies, 2014
- Data-driven journalism and the public good: “Computer-assisted-reporters” and “programmer-journalists” in ChicagoNew Media & Society, 2012
- Different Practices, Similar LogicThe International Journal of Press/Politics, 2011