Italy has been affected by many different shocks in recent years, from the Great Recession to many natural hazards. While many studies have analysed the effects of natural and socio-economic shocks on urbanized and developed areas, very few have focused on locked-in and less developed regions. In this study we focus on the pernicious effects of three earthquakes that have affected the labour markets of rural and inner municipalities of Central Italy during the last 20 years. We adopt a machine-learning technique that allows us to provide a scenario five to seven years after the earthquake for 133 municipalities affected by the Central Italy earthquake in 2016.

Fantechi, F., Modica, M. (2022). Learning from the past: a machine-learning approach for predicting the resilience of locked-in regions after a natural shock. REGIONAL STUDIES, 57(12), 2537-2550 [10.1080/00343404.2022.2089644].

Learning from the past: a machine-learning approach for predicting the resilience of locked-in regions after a natural shock

Fantechi, Federico
Primo
;
2022-06-01

Abstract

Italy has been affected by many different shocks in recent years, from the Great Recession to many natural hazards. While many studies have analysed the effects of natural and socio-economic shocks on urbanized and developed areas, very few have focused on locked-in and less developed regions. In this study we focus on the pernicious effects of three earthquakes that have affected the labour markets of rural and inner municipalities of Central Italy during the last 20 years. We adopt a machine-learning technique that allows us to provide a scenario five to seven years after the earthquake for 133 municipalities affected by the Central Italy earthquake in 2016.
giu-2022
Fantechi, F., Modica, M. (2022). Learning from the past: a machine-learning approach for predicting the resilience of locked-in regions after a natural shock. REGIONAL STUDIES, 57(12), 2537-2550 [10.1080/00343404.2022.2089644].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10447/637425
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