BinaryEPPM
Mean and Scale-Factor Modeling of Under- And Over-Dispersed Binary Data
Under- and over-dispersed binary data are modeled using an extended Poisson process model (EPPM) appropriate for binary data. A feature of the model is that the under-dispersion relative to the binomial distribution only needs to be greater than zero, but the over-dispersion is restricted compared to other distributional models such as the beta and correlated binomials. Because of this, the examples focus on under-dispersed data and how, in combination with the beta or correlated distributions, flexible models can be fitted to data displaying both under- and over-dispersion. Using Generalized Linear Model (GLM) terminology, the functions utilize linear predictors for the probability of success and scale-factor with various link functions for p, and log link for scale-factor, to fit a variety of models relevant to areas such as bioassay. Details of the EPPM are in Faddy and Smith (2012) doi:10.1002/bimj.201100214 and Smith and Faddy (2019) doi:10.18637/jss.v090.i08.
- Version3.0
- R versionunknown
- LicenseGPL-2
- Needs compilation?No
- BinaryEPPM citation info
- Last release06/04/2024
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Team
David M. Smith
Malcolm J. Faddy
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- Imports4 packages
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