LAPLACE TRANSFORM AND CONVOLUTION OF RANDOM VARIABLES
In a previous post we showed how useful Fourier Transform may be in computing convolution of symmetric R.V.s. The Laplace tranform plays an analogous role for the convolution of one sided non-negative R.V.s. In this post We will show it´s usefulness in handling with the convolution of Levy-Smirnov R.V.s., an alpha stable distribution. Laplace transform: Recall the Laplace transform pair (1) (2) Now recall from the previous post the convolution of two non-negative R.V.s If We take the it´s Laplace transform We obtain If and are i.i.d we obtain Similarly for the sum of three R.V.s Taking it´s Laplace transform Keeping on this process We may obtain (3) By equation (2) We Obtain (4) Levy-Smirnov distribution: The Levy-Smirnov distribution is a continuous probability distribution for a non-negative random variable. It belongs to the family of alpha-stable distributions. Like all stable distributions ...