In this contribution we provide initial findings to the problem of modeling fuzzy rating responses in a psychometric modeling context. In particular, we study a probabilistic tree model with the aim of representing the stage-wise mechanisms of direct fuzzy rating scales. A Multinomial model coupled with a mixture of Binomial distributions is adopted to model the parameters of LR-type fuzzy responses whereas a binary decision tree is used for the stage-wise rating mechanism. Parameter estimation is performed via marginal maximum likelihood approach whereas the characteristics of the proposed model are evaluated by means of an application to a real dataset.
A Probabilistic Tree Model to Analyze Fuzzy Rating Data / Calcagnì, Antonio; Lombardi, Luigi. - STAMPA. - 1602 CCIS:(2022), pp. 457-468. (Intervento presentato al convegno IPMU 2022 tenutosi a Milano nel 11 July - 15 July 2022) [10.1007/978-3-031-08974-9_36].
A Probabilistic Tree Model to Analyze Fuzzy Rating Data
Calcagnì, Antonio;Lombardi, Luigi
2022-01-01
Abstract
In this contribution we provide initial findings to the problem of modeling fuzzy rating responses in a psychometric modeling context. In particular, we study a probabilistic tree model with the aim of representing the stage-wise mechanisms of direct fuzzy rating scales. A Multinomial model coupled with a mixture of Binomial distributions is adopted to model the parameters of LR-type fuzzy responses whereas a binary decision tree is used for the stage-wise rating mechanism. Parameter estimation is performed via marginal maximum likelihood approach whereas the characteristics of the proposed model are evaluated by means of an application to a real dataset.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione