Use este identificador para citar o ir al link de este elemento: http://hdl.handle.net/1843/ICED-9WFGSE
Tipo: Dissertação de Mestrado
Título: A Bayesian skew mixture item response model
Autor(es): Juliane Venturelli Silva Lima
primer Tutor: Flavio Bambirra Goncalves
primer Co-tutor: Rosangela Helena Loschi
primer miembro del tribunal : Flavio Bambirra Goncalves
Segundo miembro del tribunal: Glaura da Conceicao Franco
Tercer miembro del tribunal: Tufi Machado Soares
Resumen: .
Abstract: Under the Item Response Theory, the two most common link functions used to model dichotomous data are the symmetric probit and logit. However, some authors have emphasized that these symmetric links do not always provide the best t for some data sets. To overcome this issue, asymmetric links have been proposed. This work aims at introducing a exible Item Response Model able to accommodate both symmetric and asymmetric link. The c.d.f. of a centered skew normal distribution is assumed as the link function and, additionally, we consider a nite mixture of Beta distributions and a point mass distribution at zero to describe the uncertainty about the skewness parameter, so not all items need to be assumed asymmetric a priori. Therefore, the proposed model embraces symmetric and asymmetric normal models in one also performing an intrinsic model selection. We o er the full condition distribution of ability, discrimination and dificulty parameters. We also introduce efficient algorithms to sample from the posterior distributions.
Asunto: Estatística
Teoria bayesiana de decisão estatistica
Probabilidades
Idioma: Português
Editor: Universidade Federal de Minas Gerais
Sigla da Institución: UFMG
Tipo de acceso: Acesso Aberto
URI: http://hdl.handle.net/1843/ICED-9WFGSE
Fecha del documento: 2-mar-2015
Aparece en las colecciones:Dissertações de Mestrado

archivos asociados a este elemento:
archivo Descripción TamañoFormato 
disserta__o_juliane_venturelli.pdf1.11 MBAdobe PDFVisualizar/Abrir


Los elementos en el repositorio están protegidos por copyright, con todos los derechos reservados, salvo cuando es indicado lo contrario.