Tree based methods in statistics are gaining a renewed interest in the Big Data era since they entail effective interpretation of results. In this setting, we apply a model-based technique to build trees for ordinal responses relying on a class of mixture models whose characteristic feature is the probabilistic specification of uncertainty. An application to the perception of happiness shows that the integration of tree methods with the chosen modelling boosts cluster analysis of respondents.

Growing happiness: a model-based tree / Cappelli, Carmela; Simone, Rosaria; DI IORIO, Francesca. - (2017), pp. 261-266. (Intervento presentato al convegno SIS 2017. Statistics and Data Science tenutosi a Università di Firenze nel 28-30 Giugno 2017).

Growing happiness: a model-based tree

Cappelli Carmela;Simone Rosaria;Di Iorio Francesca
2017

Abstract

Tree based methods in statistics are gaining a renewed interest in the Big Data era since they entail effective interpretation of results. In this setting, we apply a model-based technique to build trees for ordinal responses relying on a class of mixture models whose characteristic feature is the probabilistic specification of uncertainty. An application to the perception of happiness shows that the integration of tree methods with the chosen modelling boosts cluster analysis of respondents.
2017
978-88-6453-521-0
Growing happiness: a model-based tree / Cappelli, Carmela; Simone, Rosaria; DI IORIO, Francesca. - (2017), pp. 261-266. (Intervento presentato al convegno SIS 2017. Statistics and Data Science tenutosi a Università di Firenze nel 28-30 Giugno 2017).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/678947
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