masterThesis
O modelo de regressão GJS inflacionado em zero ou um
Fecha
2018-07-31Registro en:
QUEIROZ, Francisco Felipe de. O modelo de regressão GJS inflacionado em zero ou um. 2018. 186f. Dissertação (Mestrado em Matemática Aplicada e Estatística) - Centro de Ciências Exatas e da Terra, Universidade Federal do Rio Grande do Norte, Natal, 2018.
Autor
Queiroz, Francisco Felipe de
Resumen
Beta regression models are useful for modeling random variables that assume values in
the standard unit interval, such as rates and proportions. Such models cannot be used
when the data contain zeros and/or ones. In this case, usual regression models, such as
normal linear or nonlinear regression models, are not suitable. The principal aim of this
work is to propose a mixed continuous-discrete distributions to model data observed on
the intervals [0, 1) or (0, 1] and its associated regression model. The GJS distribution is
used to describe the continuous component of the model. The parameters of the mixture
distribution are modelled as functions of regression parameters. We study the performance
of the maximum likelihood estimators through Monte Carlo simulations. Also, we define
a residual for the proposed regression model to assess departures from model assumptions
as well as to detect outlying observations, and discuss some influence methods such as
the local influence. Finally, applications to real data are presented to show the usefulness
of the new regression model.