masterThesis
Estimação bayesiana no modelo potência normal bimodal assimétrico
Fecha
2016-01-28Registro en:
SOUZA, Isaac Jales Costa. Estimação bayesiana no modelo potência normal bimodal assimétrico. 2016. 95f. Dissertação (Mestrado em Matemática Aplicada e Estatística) - Centro de Ciências Exatas e da Terra, Universidade Federal do Rio Grande do Norte, Natal, 2016.
Autor
Souza, Isaac Jales Costa
Resumen
In this paper it is presented a Bayesian approach to the bimodal power-normal (BPN) models
and the bimodal asymmetric power-normal (BAPN). First, we present the BPN model,
specifying its non-informative and informative parameter α (bimodality). We obtain the posterior
distribution by MCMC method, whose feasibility of use we tested from a convergence
diagnose. After that, We use different informative priors for α and we do a sensitivity analysis
in order to evaluate the effect of hyperparameters variation on the posterior distribution. Also, it
is performed a simulation to evaluate the performance of the Bayesian estimator using informative
priors. We noted that the Bayesian method shows more satisfactory results when compared
to the maximum likelihood method. It is performed an application with bimodal data. Finally,
we introduce the linear regression model with BPN error. As for the BAPN model we also
specify informative and uninformative priors for bimodality and asymmetry parameters. We do
the MCMC Convergence Diagnostics, which is also used to obtain the posterior distribution.
We do a sensitivity analysis, applying actual data in the model and we introducing the linear
regression model with PNBA error.