The maximum likelihood estimate of mu
is the empirical mean of the
logit transformed data and the maximum likelihood estimate of
sigma
is the square root of the logit transformed
biased sample variance.
mllogitnorm(x, na.rm = FALSE)
x | a (non-empty) numeric vector of data values. |
---|---|
na.rm | logical. Should missing values be removed? |
mllogitnorm
returns an object of class univariateML
. This
is a named numeric vector with maximum likelihood estimates for mu
and sigma
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 match.call
For the density function of the logit-normal distribution see dlogitnorm.
Atchison, J., & Shen, S. M. (1980). Logistic-normal distributions: Some properties and uses. Biometrika, 67(2), 261-272.
link[dlogitnorm]dlogitnormfor the normal density.
#> [1] -99.95017