| mlsnorm {univariateML} | R Documentation | 
Skew Normal distribution maximum likelihood estimation
Description
Joint maximum likelihood estimation as implemented by fGarch::snormFit.
Usage
mlsnorm(x, na.rm = FALSE, ...)
Arguments
x | 
 a (non-empty) numeric vector of data values.  | 
na.rm | 
 logical. Should missing values be removed?  | 
... | 
 currently affects nothing.  | 
Details
For the density function of the Student t distribution see dsnorm.
Value
mlsnorm returns an object of class univariateML.
This is a named numeric vector with maximum likelihood estimates for
the parameters mean, sd, xi and the following attributes:
model | 
 The name of the model.  | 
density | 
 The density associated with the estimates.  | 
logLik | 
 The loglikelihood at the maximum.  | 
support | 
 The support of the density.  | 
n | 
 The number of observations.  | 
call | 
 The call as captured my   | 
References
Fernandez C., Steel M.F.J. (2000); On Bayesian Modelling of Fat Tails and Skewness, Preprint.
See Also
dsnorm for the Student-t density.
Examples
mlsnorm(precip)
[Package univariateML version 1.1.1 Index]