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We consider briefly the relationship of the moment generating function and the characteristic function with well known integral transforms (hence the name of this chapter).
Moment generating function and the Laplace transform
When we examine the integral forms of the moment generating function, we see that they represent forms of the Laplace transform, widely used in engineering and applied mathematics.Suppose F X is a probability distribution function with . The bilateral Laplace transform for F X is given by
The Laplace-Stieltjes transform for F X is
Thus, if M X is the moment generating function for X , then is the Laplace-Stieltjes transform for X (or, equivalently, for F X ).
The theory of Laplace-Stieltjes transforms shows that under conditions sufficiently general to include all practical distribution functions
Hence
The right hand expression is the bilateral Laplace transform of F X . We may use tables of Laplace transforms to recover F X when M X is known. This is particularly useful when the random variable X is nonnegative, so that for .
If X is absolutely continuous, then
In this case, is the bilateral Laplace transform of f X . For nonnegative random variable X , we may use ordinary tables of the Laplace transform to recover f X .
Suppose nonnegative X has moment generating function
We know that this is the moment generating function for the exponential (1) distribution. Now,
From a table of Laplace transforms, we find is the transform for the constant 1 (for ) and is the transform for , so that , as expected.
Suppose the moment generating function for a nonnegative random variable is
From a table of Laplace transforms, we find that for ,
If we put , we find after some algebraic manipulations
Thus, gamma , in keeping with the determination, above, of the moment generating function for that distribution.
The characteristic function
Since this function differs from the moment generating function by the interchange of parameter s and , where i is the imaginary unit, , the integral expressions make that change of parameter. The result is that Laplace transforms become Fourier transforms.The theoretical and applied literature is even more extensive for the characteristic function.
Not only do we have the operational properties (T1) and (T2) and the result on moments as derivatives at the origin, but there is an important expansion for the characteristic function.
An expansion theorem
If , then
We note one limit theorem which has very important consequences.
A fundamental limit theorem
Suppose is a sequence of probability distribution functions and is the corresponding sequence of characteristic functions.
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