TY - JOUR AU - Gelfand, Alan E. AB - Abstract Although generalized linear models (GLM's) are an attractive and widely used class of models, they are limited in the range of density shapes that they can provide. For instance, they are unimodal exponential families of densities in the response variable with tail behavior determined by the implicit mean-variance relationship. Dirichlet process (DP) mixing adds considerable flexibility to these models. Using such mixing, we develop models that we call DPMGLM's, which still retain the GLM character with regard to the mean. Overdispersed GLM's (OGLM's) provide an alternative class of models to cope with extra variability in samples. We show that how OGLM's may be DP mixed, leading to what we call DPMOGLM's. These models are extremely rich. Moreover, recent computational advances enable them to be fitted straightforwardly. We illustrate this with both simulated and real datasets. We also address the question of choosing between the GLM, OGLM, DPMGLM, and DPMOGLM. Finally, we consider extensions, by DP mixing, of hierarchical or multistage GLM's. TI - Dirichlet Process Mixed Generalized Linear Models JF - Journal of the American Statistical Association DO - 10.1080/01621459.1997.10474014 DA - 1997-06-01 UR - https://www.deepdyve.com/lp/taylor-francis/dirichlet-process-mixed-generalized-linear-models-HHnWFPePF1 SP - 633 EP - 639 VL - 92 IS - 438 DP - DeepDyve ER -