Beta Regression for Modelling Rates and Proportions

Silvia L. P. Ferrari(Universidade de São Paulo), Francisco Cribari‐Neto(Universidade Federal de Pernambuco)
Journal of Applied Statistics
August 1, 2004
Cited by 2,971

Abstract

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 pa-rameters. 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 inter-pretable 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 max-imum likelihood estimator. Some diagnostic measures are introduced. Finally, practical applications that employ real data are presented and discussed.


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