Exploring Governance Modes in Open Data Initiatives
Insights from France and Ireland
Caterina Santoro (Katholieke Universiteit Leuven)
César Casiano Flores (University of Twente)
Anastasija Nikiforova (University of Tartu)
A.M.G. Zuiderwijk-van Eijk (TU Delft - Information and Communication Technology)
Joep Crompvoets (Katholieke Universiteit Leuven)
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Abstract
Despite an increasing interest in the strategies to promote open data use in recent years, there has been a substantial lack of empirical and theoretical analysis of the governance modes that favored different types of open data initiatives. To address this gap, this study asks: How do governance modes support open data sharing in open government data platforms? To answer this question, we assess the coherence of the open data governance contexts of France and Ireland when sharing data on open government data platforms during the Covid-19 crisis. The study uses a multi-method approach involving both interviews with experts, identified through purposive sampling, and secondary sources for triangulation purposes. Overall, the governance context supported open data sharing in France and Ireland. Both cases are characterized by a strong central coordination with a solid trust relationship and clear legal frameworks. France, more than Ireland, relied on a market governance mode, and Ireland scored higher in networked governance due to the creation of social capital. The results provide new insights on how to combine governance modes that support open government data initiatives through coordination, collaboration with the private sector, and involvement of different actors. Practitioners can use our insights as examples of governance strategies that are fit for events that need a timely open data response.