According to the United Nations, more and more people will live in cities in the coming years. This poses serious challenges to local governments in terms of pressure on transport infrastructure, waste management, lighting, sewerage systems and the environment. In such a context, city management needs to be-come increasingly efficient and intelligent, thanks to the fundamental support of technology, the Internet of Things (IoT) and artificial intelligence (AI). The so-called Smart Cities (SCs) are thus developing across the globe to address this profound change. This study applies linear discriminant analysis (LDA) to a dataset of 102 smart cities from around the world, each described by six key dimensions of smartness: mobility, environment, government, economy, peo-ple, and living. The aim of this paper is to assess whether smart cities from the same country tend to share similar profiles and to identify the most distinctive national patterns in smart city development. Results show a high classification accuracy, with most cities correctly assigned to their country based on their smart characteristics. Canonical discriminant functions reveal meaningful sep-aration between countries, highlighting consistent national models and reveal-ing outliers. Also, the findings suggest that national policies and regional con-texts strongly shape the development of smart cities.
Discriminant Analysis of Smart City Profiles Across Countries: A Multivariate Approach, 2026-04-01.
Discriminant Analysis of Smart City Profiles Across Countries: A Multivariate Approach
Ivaldi E.;
2026-04-01
Abstract
According to the United Nations, more and more people will live in cities in the coming years. This poses serious challenges to local governments in terms of pressure on transport infrastructure, waste management, lighting, sewerage systems and the environment. In such a context, city management needs to be-come increasingly efficient and intelligent, thanks to the fundamental support of technology, the Internet of Things (IoT) and artificial intelligence (AI). The so-called Smart Cities (SCs) are thus developing across the globe to address this profound change. This study applies linear discriminant analysis (LDA) to a dataset of 102 smart cities from around the world, each described by six key dimensions of smartness: mobility, environment, government, economy, peo-ple, and living. The aim of this paper is to assess whether smart cities from the same country tend to share similar profiles and to identify the most distinctive national patterns in smart city development. Results show a high classification accuracy, with most cities correctly assigned to their country based on their smart characteristics. Canonical discriminant functions reveal meaningful sep-aration between countries, highlighting consistent national models and reveal-ing outliers. Also, the findings suggest that national policies and regional con-texts strongly shape the development of smart cities.| File | Dimensione | Formato | |
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