mlllogis {univariateML} | R Documentation |
Log-logistic distribution maximum likelihood estimation
Description
The maximum likelihood estimate of shape
and rate
are calculated
by transforming the data back to the logistic model and applying
mllogis
.
Usage
mlllogis(x, na.rm = FALSE, ...)
Arguments
x |
a (non-empty) numeric vector of data values. |
na.rm |
logical. Should missing values be removed? |
... |
passed to |
Details
For the density function of the log-logistic distribution see Loglogistic
Value
mlllogis
returns an object of class univariateML
.
This is a named numeric vector with maximum likelihood estimates for
shape
and rate
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
Kleiber, C. and Kotz, S. (2003), Statistical Size Distributions in Economics and Actuarial Sciences, Wiley.
Klugman, S. A., Panjer, H. H. and Willmot, G. E. (2012), Loss Models, From Data to Decisions, Fourth Edition, Wiley.
Dutang, C., Goulet, V., & Pigeon, M. (2008). actuar: An R package for actuarial science. Journal of Statistical Software, 25(7), 1-37.
See Also
Loglogistic for the log-logistic density.
Examples
mllnorm(precip)