How (not to) Run an AI Project in Investigative Journalism
Peer reviewed, Journal article
Published version
Date
2023Metadata
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Abstract
Data journalists are increasingly reliant on automation and artificial
intelligence (AI) to process and analyse massive datasets. AI can
contribute to journalism by creating visualizations, verifying
accuracy of information, analysing historical data, monitoring
social media, finding patterns and outliers, generating text and
much more. However, the integration of AI into the newsroom
comes with its own challenges. In this article, we take a practice-
based approach to develop a deeper understanding of how to
overcome such challenges. Our teams of data scientists, AI
experts and journalists took on four projects incorporating data
science and machine learning into investigative journalism. From
those experiences, we found that access to data at scale, data
quality and reworking the concept of “newsworthy” as a machine
learning question were the most significant obstacles to
deploying AI in the newsroom. We recommend closer
collaborations between team members of different disciplines to
create a truly trans-disciplinary approach, as well as some
practical considerations for choosing projects to facilitate
successful AI-assisted investigations.