A test for correct model specification in inflated beta regressions

Autor(es) e Instituição: 
Tarciana Liberal Pereira UFPB
Francisco Cribari-Neto UFPE
Apresentador: 
Tarciana Liberal Pereira

Beta regression models are useful for modeling data that assume values in the standard unit interval (0,1), such as rates and proportions. These models, however, cannot be used when the data contain observations that equal zero or one (the limits of the unit interval). Ospina and Ferrari(2010b) developed the class of inflated beta regressions to handle situations in which the data contain positive mass at zero and/or one. The model is quite general and contain three submodels: for the mean, for the probability that the variate equals zero or one, and for the precision. In this paper we propose a misspecification test for inflated beta regressions. In particular, we propose two variants of the test. In the first variant, we only add testing variables to the mean submodel. The second variant follows from adding testing variable to all three submodels. We perform extensive Monte Carlo simulations in order to assess the finite-sample properties of the tests (size and power), and also to gain insight on which variables should be used as testing variable and on which asymptotic testing procedure delivers the most reliable inferences. We consider a number of different misspecifications, namely: neglected nonlinearities, omitted independent variables, incorrect link functions, neglected spatial correlation and neglected variable dispersion. Finally, an empirical illustration is presented and discussed.

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