Sustainability Transitions (ST) is a complex phenomenon, encompassing environmental, societal and economic aspects. Its study requires a proper investigation, with the identification of a robust indicator and the definition of a suitable method of analysis. To identify the most informative geographical boundaries for analysing ST pathways, we consider the Carbon Emission Intensity (CEI) and estimate a four-level growth model to study its pattern over time for all the EU regions. We apply this model to a novel longitudinal dataset that covers CEI data of European regions at four different geographical scales (state, areas, regions, and provinces) over a nine-year timespan. This approach aims at supporting the decision-makers in developing more effective sustainability transitions policies across Europe, especially focusing on regions and overcoming the well-known “one-size fits all” approach. • The unconditional growth model has been applied to a multi-level structure considering four levels, defined by three geographical scales and time. • The ideal structure of the model would have required five levels, but the sample size of the dataset made the application computationally unfeasible; • The application of the model allowed to identify patterns of stability and change over time of the variable amongst different geographical units.

Multilevel-growth modeling for the study of sustainability transitions / Mura Matteo, Longo Mariolina, Toschi Laura, Zanni Sara, Visani Franco, Bianconcini Silvia. - In: METHODSX (AMSTERDAM). - ISSN 2215-0161. - ELETTRONICO. - 8:101359(2021), pp. 101359.1-101359.8. [10.1016/j.mex.2021.101359]

Multilevel-growth modeling for the study of sustainability transitions.

Mura Matteo;Longo Mariolina;Toschi Laura;Zanni Sara;Visani Franco;Bianconcini Silvia
2021

Abstract

Sustainability Transitions (ST) is a complex phenomenon, encompassing environmental, societal and economic aspects. Its study requires a proper investigation, with the identification of a robust indicator and the definition of a suitable method of analysis. To identify the most informative geographical boundaries for analysing ST pathways, we consider the Carbon Emission Intensity (CEI) and estimate a four-level growth model to study its pattern over time for all the EU regions. We apply this model to a novel longitudinal dataset that covers CEI data of European regions at four different geographical scales (state, areas, regions, and provinces) over a nine-year timespan. This approach aims at supporting the decision-makers in developing more effective sustainability transitions policies across Europe, especially focusing on regions and overcoming the well-known “one-size fits all” approach. • The unconditional growth model has been applied to a multi-level structure considering four levels, defined by three geographical scales and time. • The ideal structure of the model would have required five levels, but the sample size of the dataset made the application computationally unfeasible; • The application of the model allowed to identify patterns of stability and change over time of the variable amongst different geographical units.
2021
Multilevel-growth modeling for the study of sustainability transitions / Mura Matteo, Longo Mariolina, Toschi Laura, Zanni Sara, Visani Franco, Bianconcini Silvia. - In: METHODSX (AMSTERDAM). - ISSN 2215-0161. - ELETTRONICO. - 8:101359(2021), pp. 101359.1-101359.8. [10.1016/j.mex.2021.101359]
Mura Matteo, Longo Mariolina, Toschi Laura, Zanni Sara, Visani Franco, Bianconcini Silvia
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/846443
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