Banca de DEFESA: JOSE JAIRO DE SANTANA E SILVA

Uma banca de DEFESA de DOUTORADO foi cadastrada pelo programa.
STUDENT : JOSE JAIRO DE SANTANA E SILVA
DATE: 27/07/2023
TIME: 14:00
LOCAL: Google Meet
TITLE:
KEY WORDS:

Atypical observation, beta distribution, beta regression, diagnostic analysis


PAGES: 120
BIG AREA: Ciências Exatas e da Terra
AREA: Probabilidade e Estatística
SUMMARY:

The beta distribution is routinely used to model variables that assume values in the standard unit interval. Several alternative laws have, nonetheless, been proposed in the literature, such as the Kumaraswamy and simplex distributions. A natural and empirically motivated question is: does the beta law provide an adequate representation for a given dataset? We test the null hypothesis that the beta model is correctly specified against the alternative hypothesis that it does not provide an adequate data fit. Our tests are based on the information matrix equality, which only holds when the model is correctly specified. They are thus sensitive to model misspecification. Simulation evidence shows that the tests perform well, especially when coupled with bootstrap resampling. We model state and county Covid-19 mortality rates in the United States. The misspecification tests indicate that the beta law successfully represents Covid-19 death rates when they are computed using either data from prior to the start of the vaccination campaign or data collected when such a campaign was under way. In the latter case, the beta law is only accepted when the negative impact of vaccination reach on death rates is moderate. The beta model is rejected under data heterogeneity, i.e., when mortality rates are computed using information gathered during both time periods.

The beta regression model is tailored for responses that assume values in the standard unit interval. In its more general formulation, it comprises two submodels, one for the mean response and another for the precision parameter. We develop tests of correct specification for such a model. The tests are based on the information matrix equality, which fails to hold when the model is incorrectly specified. We establish the validity of the tests in the class of varying precision beta regressions, provide closed-form expressions for the quantities used in the test statistics, and present simulation evidence on the tests' null and non-null behavior. We show it is possible to achieve very good control of the type I error probability when data resampling is employed and that the tests are able to reliably detect incorrect model specification, especially when the sample size is not small. Two empirical applications are presented and discussed.

Diagnostic analysis in regression modeling is usually carried out based on residual or local influence analysis. We develop a new approach for detecting atypical data points in models for which parameter estimation is performed by maximum likelihood. The new approach uses the information matrix equality which holds when the model is correctly specified. We consider different measures of the distance between two symmetric matrices and use them with sample counterparts of the matrices in the information matrix equality in such a way that zero distance corresponds to correct model specification. The distance measures we use thus quantify the degree of model adequacy. We show that they can be used to identify observations that disproportionately contribute to altering the degree of model adequacy. We also introduce a modified generalized Cook distance and a new criterion that uses the two generalized Cook's distances (modified and unmodified). Empirical applications are presented and discussed.


COMMITTEE MEMBERS:
Interno - 2259583 - ALDO WILLIAM MEDINA GARAY
Presidente - 1279737 - FRANCISCO CRIBARI NETO
Interno - 2134267 - GETULIO JOSE AMORIM DO AMARAL
Externo à Instituição - GILBERTO ALVARENGA PAULA - USP
Externa à Instituição - SILVIA LOPES DE PAULA FERRARI - USP
Notícia cadastrada em: 18/04/2023 08:51
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