A2 Review article, Literature review, Systematic review
Mapping Automation in Journalism Studies 2010–2019 : A Literature Review (2024)


Siitonen, M., Laajalahti, A., & Venäläinen, P. (2024). Mapping Automation in Journalism Studies 2010–2019 : A Literature Review. Journalism Studies, 25(3), 299-318. https://doi.org/10.1080/1461670x.2023.2296034


JYU authors or editors


Publication details

All authors or editorsSiitonen, Marko; Laajalahti, Anne; Venäläinen, Päivi

Journal or seriesJournalism Studies

ISSN1461-670X

eISSN1469-9699

Publication year2024

Publication date27/12/2023

Volume25

Issue number3

Pages range299-318

PublisherRoutledge

Publication countryUnited Kingdom

Publication languageEnglish

DOIhttps://doi.org/10.1080/1461670x.2023.2296034

Publication open accessOpenly available

Publication channel open accessPartially open access channel

Publication is parallel published (JYX)https://jyx.jyu.fi/handle/123456789/92608


Abstract

The algorithmic turn has fundamentally transformed journalistic work. Academic interest in the implication of automated algorithms for journalism has grown hand-in-hand with their everyday use. This paper presents a literature review of peer-reviewed research reports (N = 62) on automated algorithms in the context of journalistic work. Our review focuses on the first decade (2010–2019) during which automated journalism gained traction. The study identifies the most prominent perspectives or themes that studies in automated journalism have explored and the future directions for research that researchers have proposed. Based on the analysis, the dominant themes that studies in automated journalism have covered include (1) testing and developing algorithmic tools, (2) developing practices and policies for journalistic work, (3) attitudes and technology acceptance, and (4) societal and macro-level discourses concerning AI and journalism. The new directions for research that studies on automated algorithms have recognized relate to (1) target groups and stakeholders—that is, who to study in the future; (2) emergent themes and phenomena—that is, what to study in the future; and (3) approaches and methodologies—that is, how to study these topics in the future. These findings help create a holistic picture of possible future directions for the field.


Keywordsjournalismonline journalismalgorithmsartificial intelligence

Free keywordsalgorithmic journalism; artificial intelligence; automated algorithms; automated journalism; computational journalism; robot journalism


Contributing organizations


Ministry reportingYes

Reporting Year2023

JUFO rating3


Last updated on 2024-15-05 at 13:33