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In statistics, Fisher's Scoring algorithm is a form of Newton's method used to solve maximum likelihood equations numerically.
Sketch of Derivation
Let
be random variables, independent and identically distributed with twice differentiable p.d.f.
, and we wish to calculate the maximum likelihood estimator (M.L.E.)
of
. First, suppose we have a starting point for our algorithm
, and consider a Taylor expansion of the score function,
, about
:
,
where

is the observed information matrix at
. Now, setting
, using that
and rearranging gives us:
.
We therefore use the algorithm
,
and under certain regularity conditions, it can be shown that
.
Fisher Scoring
In practice,
is usually replaced by
, the Fisher information, thus giving us the Fisher Scoring Algorithm:
.
References