A Composite Indicator (CI) is a useful tool to synthesize information on a multidimensional phenomenon and make policy decisions. Multidimensional phenomena are often modeled by hierarchical latent structures that reconstruct relationships between variables. In this paper, we propose an exploratory, simultaneous model for building a hierarchical CI system to synthesize a multidimensional phenomenon and analyze its several facets. The proposal, called the Ultrametric Composite Indicator (UCI) model, reconstructs the hierarchical relationships among manifest variables detected by the correlation matrix via an extended ultrametric correlation matrix. The latter has the feature of being one-to-one associated with a hierarchy of latent concepts. Furthermore, the proposal introduces a test to unravel relevant dimensions in the hierarchy and retain statistically significant higher-level CIs. A simulation study is illustrated to compare the proposal with other existing methodologies. Finally, the UCI model is applied to study Italian municipalities’ behavior toward waste management and to provide a tool to guide their councils in policy decisions.

Cavicchia, C., Sarnacchiaro, P., Vichi, M., Zaccaria, G. (2024). A model-based ultrametric composite indicator for studying waste management in Italian municipalities. COMPUTATIONAL STATISTICS, 39, 21-50 [10.1007/s00180-023-01333-9].

A model-based ultrametric composite indicator for studying waste management in Italian municipalities

Zaccaria, G
2024

Abstract

A Composite Indicator (CI) is a useful tool to synthesize information on a multidimensional phenomenon and make policy decisions. Multidimensional phenomena are often modeled by hierarchical latent structures that reconstruct relationships between variables. In this paper, we propose an exploratory, simultaneous model for building a hierarchical CI system to synthesize a multidimensional phenomenon and analyze its several facets. The proposal, called the Ultrametric Composite Indicator (UCI) model, reconstructs the hierarchical relationships among manifest variables detected by the correlation matrix via an extended ultrametric correlation matrix. The latter has the feature of being one-to-one associated with a hierarchy of latent concepts. Furthermore, the proposal introduces a test to unravel relevant dimensions in the hierarchy and retain statistically significant higher-level CIs. A simulation study is illustrated to compare the proposal with other existing methodologies. Finally, the UCI model is applied to study Italian municipalities’ behavior toward waste management and to provide a tool to guide their councils in policy decisions.
Articolo in rivista - Articolo scientifico
Composite indicators; External information; Hierarchical models; Ultrametricity; Waste management;
English
16-mar-2023
2024
39
21
50
open
Cavicchia, C., Sarnacchiaro, P., Vichi, M., Zaccaria, G. (2024). A model-based ultrametric composite indicator for studying waste management in Italian municipalities. COMPUTATIONAL STATISTICS, 39, 21-50 [10.1007/s00180-023-01333-9].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/408239
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