The on-going economic crisis has reinforced the feeling that macroeconomic indicators, namely economic indicators at country level, do not provide a correct picture of the living conditions in a territory. In fact, individual and local characteristics also influence the well-being of individuals and, within the same country, territories can vary at a large extent. Thus, the analysis of well-being at local level is crucial. Here, we analyse the time series of a selection of indicators that constitute the Equitable and Sustainable Well-being (BES) at local level (NUTS3). After providing an overview of the temporal trends in the selected well-being indicators, we construct a composite index of well-being for groups of regions (NUTS1) applying a latent variable model estimated in a Bayesian framework.

THE EQUITABLE AND SUSTAINABLE WELL-BEING AT LOCAL LEVEL: A FIRST ATTEMPT OF TIME SERIES AGGREGATION / Ciommi, Mariateresa; Gigliarano, Chiara; Taralli, Stefania; Chelli, Francesco M.. - In: RIVISTA ITALIANA DI ECONOMIA, DEMOGRAFIA E STATISTICA. - ISSN 0035-6832. - STAMPA. - 71:4(2017), pp. 131-142.

THE EQUITABLE AND SUSTAINABLE WELL-BEING AT LOCAL LEVEL: A FIRST ATTEMPT OF TIME SERIES AGGREGATION

Mariateresa Ciommi
;
Chiara Gigliarano;TARALLI, STEFANIA;Francesco M. Chelli
2017-01-01

Abstract

The on-going economic crisis has reinforced the feeling that macroeconomic indicators, namely economic indicators at country level, do not provide a correct picture of the living conditions in a territory. In fact, individual and local characteristics also influence the well-being of individuals and, within the same country, territories can vary at a large extent. Thus, the analysis of well-being at local level is crucial. Here, we analyse the time series of a selection of indicators that constitute the Equitable and Sustainable Well-being (BES) at local level (NUTS3). After providing an overview of the temporal trends in the selected well-being indicators, we construct a composite index of well-being for groups of regions (NUTS1) applying a latent variable model estimated in a Bayesian framework.
2017
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11566/253193
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