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Moment-generating function
In probability theory and statistics, the moment-generating function of a random variable X is
wherever this expectation exists. The moment-generating function generates the moments of the probability distribution, as follows. Provided the moment-generating function exists in an interval around t = 0,
If X has a continuous probability density function f(x) then the moment generating function is given by
where mi is the ith moment.
Regardless of whether probability distribution is continuous or not, the moment-generating function is given by the Riemann-Stieltjes integral
where F is the cumulative distribution function.
If X1, X2, ..., Xn is a sequence of independent (and not necessarily identically distributed) random variables, and
where the a i are constants, then the probability density function for S n is the convolution of the probability density functions of each of the X i and the moment-generating function for S n is given by
Related to the moment-generating function are a number of other transforms that are common in probability theory, including the characteristic function and the probability-generating function.
The cumulant-generating function is the logarithm of the moment-generating function.
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