In statistical surveys, people are often asked to express evaluations on several topics or to make an ordered arrangement in a list of objects (items, services, sentences, etc.); thus, the analysis of rankings and ratings is receiving a growing interest in many fields. In this framework, we develop a testing procedure for a a class of mixture models with covariates (cub models) and generally developed in a parametric context. Instead, in this paper, we propose a nonparametric solution to perform inference on cub models, specifically on the coecients of the covariates. A simulation study proves that this approach is more appropriate in some specic data settings, mostly for small sample sizes.
Permutation inference for a class of mixture models
BONNINI, Stefano;
2012
Abstract
In statistical surveys, people are often asked to express evaluations on several topics or to make an ordered arrangement in a list of objects (items, services, sentences, etc.); thus, the analysis of rankings and ratings is receiving a growing interest in many fields. In this framework, we develop a testing procedure for a a class of mixture models with covariates (cub models) and generally developed in a parametric context. Instead, in this paper, we propose a nonparametric solution to perform inference on cub models, specifically on the coecients of the covariates. A simulation study proves that this approach is more appropriate in some specic data settings, mostly for small sample sizes.I documenti in SFERA sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.