Page 161 - Schaum's Outlines - Probability, Random Variables And Random Processes
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154      FUNCTIONS  OF RANDOM  VARIABLES,  EXPECTATION,  LIMIT  THEOREMS  [CHAP.  4



          CHARACTERISTIC FUNCTIONS
          4.57.  The  r.v.  X  can  take  on  the  values  x,  = - 1 and  x2 = + 1  with  pmfs p,(x,)  = p,(x2)  = 0.5.
                Determine the characteristic function of X.

                   By definition (4.50), the characteristic function of X is
                                     Yx(o)  = 0.5e-jw + 0.5d0 = i(dw + e-jw) = cos o


          4.58.  Find the characteristic function of a Cauchy r.v. X with parameter a and pdf given by




                   By  direct integration (or from the Table of  Fourier transforms in Appendix B), we have the following
                Fourier transform pair :




                Now, by the duality property of the Fourier transform, we have the following Fourier transform pair:



                or (by the linearity property of the Fourier transform)
                                                   a
                                                        ++ e-alwl
                                                n(x2 + a2)
                Thus, the characteristic function of X is
                                                  Yx(o)  = e-alwl                         (4.1 24)
                Note that the moment generating function of the Cauchy r.v. X does not exist, since E(Xn) + co for n 2 2.


          4.59.  The characteristic function of a r.v. X is given by




                Find the pdf of X.
                   From formula (4.51), we obtain the pdf of X as














          4.60.  Find the characteristic function of a normal r.v. X = N(p; a2).

                   The moment generating function of N(p; a2) is [Eq. (4.121)]
                                                 Mx(t) = eP'  + 02'2/2
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