A two-part finite mixture quantile regression model for semi-continuous longitudinal data
Antonello Maruotti,
Luca Merlo,
Lea Petrella
Abstract:This paper develops a two-part finite mixture quantile regression model for semi-continuous longitudinal data. The proposed methodology allows heterogeneity sources that influence the model for the binary response variable, to influence also the distribution of the positive outcomes. As is common in the quantile regression literature, estimation and inference on the model parameters are based on the Asymmetric Laplace distribution. Maximum likelihood estimates are obtained through the EM algorithm without para… Show more
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