Democratizing Open Data Through AI: The Case of Sweden

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DOI :

https://doi.org/10.55790/journals/ressi.2025.e1823

Mots-clés :

Open Data Democratization, Public Sector, Accessibility, Reusability, Artificial intelligence, Intelligence Artificielle

Résumé

The article explores the democratization of open data through the lens of artificial intelligence (AI) and its implications for citizen participation and engagement. “Open government” initiatives aim to promote increased transparency and accountability in governance issues, boost innovation and create inclusive and efficient government institutions. Since Sweden has the oldest Freedom of Press Act and the Right to Access Public Records Act, its citizens are used to free access to government information. However current developments pushing the opening of government data, are different from it because they focus on the commercialization of government information/data with to create an information market. Using the secondary research method, the article explores the intersection of artificial intelligence (AI) and open data within the public sector in Sweden, highlighting both the opportunities and challenges presented by these technologies. It discusses the barriers to open data utilization, such as privacy concerns, information quality, and technical challenges. AI can enhance the accessibility and reusability of government data while addressing ethical and social implications. The potential of AI to democratize open data is examined. The article advocates an inclusive approach to open data to avoid a data-divide. By leveraging AI, the article posits that the public sector can improve service delivery and foster innovation, while also emphasizing the importance of transparency and citizen engagement in the open data movement.

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Publiée

17-04-2025

Comment citer

Svärd, P. (2025). Democratizing Open Data Through AI: The Case of Sweden. Revue électronique Suisse De Science De l’information (RESSI), (Spécial CIHN24). https://doi.org/10.55790/journals/ressi.2025.e1823

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Études et recherches