Inspired by the increasing attention of the scientific community towards the understanding of human relationships and actions in social sciences, in this paper we address the problem of inferring from voting data the hidden influence on individuals from competing ideology groups. As a case study, we present an analysis of the closeness of members of the Italian Senate to political parties during the XVII Legislature. The proposed approach is aimed at automatic extraction of the relevant information by disentangling the actual influences from noise, via a two step procedure. First, a sparse principal component projection is performed on the standardized voting data. Then, the projected data is combined with a generative mixture model, and an information theoretic measure, which we refer to as Political Data-aNalytic Affinity (Political DNA), is finally derived. We show that the definition of this new affinity measure, together with suitable visualization tools for displaying the results of analysis, allows a better understanding and interpretability of the relationships among political groups.

Possieri, C., Ravazzi, C., Dabbene, F., Calafiore, G.c. (2020). A new metric for understanding hidden political influences from voting records. PLOS ONE, 15(9) [10.1371/journal.pone.0238481].

A new metric for understanding hidden political influences from voting records

Possieri C.;
2020-01-01

Abstract

Inspired by the increasing attention of the scientific community towards the understanding of human relationships and actions in social sciences, in this paper we address the problem of inferring from voting data the hidden influence on individuals from competing ideology groups. As a case study, we present an analysis of the closeness of members of the Italian Senate to political parties during the XVII Legislature. The proposed approach is aimed at automatic extraction of the relevant information by disentangling the actual influences from noise, via a two step procedure. First, a sparse principal component projection is performed on the standardized voting data. Then, the projected data is combined with a generative mixture model, and an information theoretic measure, which we refer to as Political Data-aNalytic Affinity (Political DNA), is finally derived. We show that the definition of this new affinity measure, together with suitable visualization tools for displaying the results of analysis, allows a better understanding and interpretability of the relationships among political groups.
2020
Pubblicato
Rilevanza internazionale
Articolo
Esperti anonimi
Settore ING-INF/04 - AUTOMATICA
English
Forecasting
Humans
Records
Surveys and Questionnaires
Weights and Measures
Peer Influence
Politics
Possieri, C., Ravazzi, C., Dabbene, F., Calafiore, G.c. (2020). A new metric for understanding hidden political influences from voting records. PLOS ONE, 15(9) [10.1371/journal.pone.0238481].
Possieri, C; Ravazzi, C; Dabbene, F; Calafiore, Gc
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/294425
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