Temporary dummy for one of the ppm models
qgamma_ppm(x, p)
q****
returns a list containing at least the following:
ml_params:
maximum likelihood estimates for the parameters.
ml_value:
the value of the log-likelihood at the maximum.
standard_errors:
estimates of the standard errors on the parameters,
from the inverse observed information matrix.
ml_quantiles:
quantiles calculated using maximum likelihood.
cp_quantiles:
predictive quantiles calculated using a calibrating prior.
maic:
the AIC score for the maximum likelihood model, times -1/2.
cp_method:
a comment about the method used to generate the cp
prediction.
For models with predictors, q****
additionally returns:
predictedparameter:
the estimated value for parameter,
as a function of the predictor.
adjustedx:
the detrended values of x
r****
returns a list containing the following:
ml_params:
maximum likelihood estimates for the parameters.
ml_deviates:
random deviates calculated using maximum likelihood.
cp_deviates:
predictive random deviates calculated using a calibrating prior.
cp_method:
a comment about the method used to generate the cp
prediction.
d****
returns a list containing the following:
ml_params:
maximum likelihood estimates for the parameters.
ml_pdf:
density function from maximum likelihood.
cp_pdf:
predictive density function calculated using a calibrating prior
(not available in EVT routines, for mathematical reasons, unless using RUST).
cp_method:
a comment about the method used to generate the cp
prediction.
p***
returns a list containing the following:
ml_params:
maximum likelihood estimates for the parameters.
ml_cdf:
distribution function from maximum likelihood.
cp_cdf:
predictive distribution function calculated using a calibrating prior
(not available in EVT routines, for mathematical reasons, unless using RUST).
cp_method:
a comment about the method used to generate the cp
prediction.
t***
returns a list containing the following:
theta_samples:
random samples from the parameter posterior.
a vector of training data values
a vector of probabilities at which to generate predictive quantiles