This course is a short series of lectures on Introductory Statistics. Topics
covered are listed in the Table of Contents. The notes were prepared by EwaPaszek and Marek Kimmel.
The development of this course has been supported by NSF 0203396 grant.
Maximum likelihood estimation - examples
Exponential distribution
Let
be a random sample from the exponential distribution with p.d.f.
The likelihood function is given by
The natural logarithm of
is
Thus,
The solution of this equation for
is
Note that,
Hence,
does have a maximum at
, and thus the maximum likelihood estimator for
is
This is both an unbiased estimator and the method of moments estimator for
.
Geometric distribution
Let
be a random sample from the geometric distribution with p.d.f.
The likelihood function is given by
The natural logarithm of
is
Thus restricting
p to
so as to be able to take the derivative, we have
Solving for
p , we obtain
So the maximum likelihood estimator of
p is
Again this estimator is the method of moments estimator, and it agrees with the intuition because, in n observations of a geometric random variable, there are
n successes in the
trials. Thus the estimate of p is the number of successes divided by the total number of trials.
Normal distribution
Let
be a random sample from
, where
That is, here let
and
. Then
or equivalently,
The natural logarithm of the likelihood function is
The partial derivatives with respect to
and
are
and
The equation
has the solution
. Setting
and replacing
by
yields
By considering the usual condition on the second partial derivatives, these solutions do provide a maximum. Thus the maximum likelihood estimators
and
are
and
Where we compare the above example with the introductory one, we see that the method of moments estimators and the maximum likelihood estimators for
and
are the same. But this is not always the case. If they are not the same, which is better? Due to the fact that the maximum likelihood estimator of
has an approximate normal distribution with mean
and a variance that is equal to a certain lower bound, thus at least approximately, it is unbiased minimum variance estimator. Accordingly, most statisticians prefer the maximum likelihood estimators than estimators found using the method of moments.
Binomial distribution
Observations:
k successes in
n Bernoulli trials.
Poisson distribution
Observations:
,