Published May 9, 2024 | Version v3
Data paper Open

A set of multidimensional indicators to assess the resilience and attractiveness of Italian provinces and municipalities in the period 2010-2022

Description

In this work we present a comprehensive panel dataset capturing four dimensions of capital—economic, human, social, and physical—to analyze the attractiveness and resilience of Italian territories. The dataset encompasses data at the provincial (NUTS3) and municipal levels from 2010 to 2022, drawing from various open data repositories. This extensive dataset facilitates granular territorial analyses by providing novel indicators at finer spatial levels, which are crucial for evaluating territorial policies and understanding local characteristics.

In particular we provide 31 indicators across different territorial dimensions, to allow researchers and policymakers to study Italian territories with a fine spatial granularity, monitoring territorial resilience and attractiveness over time, and answering diverse interdisciplinary research questions.

Technical info

Observations in the dataset are uniquely identified by the following metadata columns:

  • Municipal data and indicators: municipal_code, municipal_name
  • NUTS3: province_name

Additionally, aggregation at less detailed geographical levels can be performed using the following columns:

  • NUTS2: region_name
  • NUTS1: nuts1_code

Notes

This research was conducted under the GRINS (Growing Resilient, INclusive and Sustainable) project and received funding from the European Union Next-GenerationEU (NATIONAL RECOVERY AND RESILIENCE PLAN (NRRP), MISSION 4, COMPONENT 2, INVESTMENT 1.3 – D.D. 1558 11/10/2022, PE00000018, CUP: H93C22000650001, Spoke 7 «Territorial sustainability»). This manuscript solely represents the views and opinions of the authors, and neither the European Union nor the European Commission is responsible for them. 

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