Abstract
An increasingly common practice for policy-makers is to leverage e-participation to collect citizens’ opinions and improve their decision-making processes. This practice, however, is hindered by the large quantity of collected opinions which are often overloading and hard to value. This is referred to as information overload. As a way to mitigate this challenge for policy-makers, this article develops a prioritization framework for citizens’ ideas collected through e-participation. The framework builds on Design Science Research and is validated on a real-world case in collaboration with the European Commission. The resulting contributions are threefold. First, theoretical criteria, popularity and polarization, are developed to prioritize citizens’ proposals. Then, automated and quantitative metrics are proposed to measure these criteria. Finally, a prioritization matrix is developed to visually assess the relative priority of these citizens’ proposals.
Original language | English |
---|---|
Article number | 100264 |
Journal | International Journal of Information Management Data Insights |
Volume | 4 |
Issue number | 2 |
DOIs | |
Publication status | Published - Nov 2024 |
Keywords
- Citizen participation
- Data-driven decision making
- Digital government
- Ideas prioritization
- Information overload
- Smart governance
Student theses
-
Reducing the Effects of Information Overload on Governments Decision-Making: Empirical Frameworks to Support Data Selection
Lega, M. (Author)Burnay, C. (Supervisor), Linden, I. (Co-Supervisor), Gnabo, J.-Y. (President), Kolp, M. (Jury), Simonofski, A. (Jury) & CRUSOE, J. (Jury), 24 Apr 2024Student thesis: Doc types › Doctor of Sciences