Abstract. This paper proposes a regression model where the response is beta distributed using a parameterization of the beta law that is indexed by mean and dispersion parameters. The proposed model is useful for situations where the variable of interest is continuous and restricted to the interval (0, 1) and is related to other variables through a regression structure. The regression parameters of the beta regression model are interpretable in terms of the mean of the response and, when the logit link is used, of an odds ratio, unlike the parameters of a linear regression that employs a transformed response. Estimation is performed by maximum likelihood. We provide closed-form expressions for the score function, for Fisher's information matrix and its inverse. Hypothesis testing is performed using approximations obtained from the asymptotic normality of the maximum likelihood estimator. Some diagnostic measures are introduced. Finally, practical applications that employ real data are presented and discussed.
This paper proposes a general class of regression models for continuous
proportions when the data contain zeros or ones. The proposed class of models
assumes that the response variable has a mixed continuous-discrete distribution
with probability mass at zero or one. The beta distribution is used to describe
the continuous component of the model, since its density has a wide range of
different shapes depending on the values of the two parameters that index the
distribution. We use a suitable parameterization of the beta law in terms of
its mean and a precision parameter. The parameters of the mixture distribution
are modeled as functions of regression parameters. We provide inference,
diagnostic, and model selection tools for this class of models. A practical
application that employs real data is presented.Comment: 21 pages, 3 figures, 5 tables. Computational Statistics and Data
Analysis, 17 October 2011, ISSN 0167-9473
(http://www.sciencedirect.com/science/article/pii/S0167947311003628
We propose two new residuals for the class of beta regression models, and numerically evaluate their behaviour relative to the residuals proposed by Ferrari and Cribari-Neto. Monte Carlo simulation results and empirical applications using real and simulated data are provided. The results favour one of the residuals we propose.beta distribution, beta regression, maximum likelihood estimation, proportions, residuals,
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