The aim of this dissertation is to propose a new approach to poverty multidimensionality analysis. In particular, the research question concerns a comparison between the classical statistical models of probit/logit regressions and neural networks. The empirical analysis is done according to European Union’s statements and variables declaration as a reference benchmark for Italy. The thesis is divided into four parts, namely a first introductory section concerning a brief literature review about poverty according to the European and Italian contexts; the second, regarding the proposed methodologies of regression models and neural networks theoretical background, followed by a third concerning data description. The core of the elaborated is in the fourth chapter, where the emprirical analysis is carried out: the main results, both derived by the traditional regressions, and the ones provided by the created neural network, will be compared.

POVERTY ANALYSIS WITH NEURAL NETWORKS -Italy case study-

Grigoletti, Chiara
2019/2020

Abstract

The aim of this dissertation is to propose a new approach to poverty multidimensionality analysis. In particular, the research question concerns a comparison between the classical statistical models of probit/logit regressions and neural networks. The empirical analysis is done according to European Union’s statements and variables declaration as a reference benchmark for Italy. The thesis is divided into four parts, namely a first introductory section concerning a brief literature review about poverty according to the European and Italian contexts; the second, regarding the proposed methodologies of regression models and neural networks theoretical background, followed by a third concerning data description. The core of the elaborated is in the fourth chapter, where the emprirical analysis is carried out: the main results, both derived by the traditional regressions, and the ones provided by the created neural network, will be compared.
2019-03-29
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14247/15435