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Unit 15: Normal Probability Distribution




                                                                                                Notes
                                    125.5 100
               Thus,   P X 125.5  P z          P z  2.80
                                       9.1
                                 0.5000 P 0 z  2.80  0.5000 0.4974 0.0026.
          2.   In a similar way, the probability of the number of aces between 80 and 110 is given by

                                 79.5 100    110.5 100
               P 79.5 X 110.5  P           z
                                    9.1         9.1

                          P  2.25 z 1.15  P 0 z  2.25  P 0 z 1.15
                        = 0.4878 + 0.3749 = 0.8627

                                             19.5    20.5
          3.   P(X = 120) = P(119.5   X   120.5) =  P  z
                                             9.1     9.1
                        = P(2.14   z   2.25) = P(0   z   2.25)   P(0   z   2.14)
                        = 0.4878   0.4838 = 0.0040

          Self Assessment

          Fill in the blanks:

          15.  Normal distribution can be used as an approximation to binomial distribution when n is
               large and ............................ p ........................ q is very small.
          16.  In Normal distribution, the standard normal variate z would vary from .............to ............

          15.6 Normal Approximation to Poisson Distribution

          Normal distribution can also be used to approximate a Poisson distribution when its parameter
          m   10. If X is a Poisson variate with mean m, then, for m   10, the distribution of X can be
                                                                                 X - m
          taken as approximately normal with mean m and standard deviation  m  so that  z =
                                                                                   m
          is a standard normal variate.


                 Example: A random variable X follows Poisson distribution with parameter 25. Use normal
          approximation to Poisson distribution to find the probability that X is greater than or equal to 30.
          Solution:
          P(X   30) = P(X   29.5)  (after making correction for continuity).
                            .
                          295 25
                                          .
                      P z           P z  09
                             5
                    = 0.5000   P(0   z   0.9) = 0.5000   0.3159 = 0.1841
          Fitting a Normal Curve

          A normal curve is fitted to the observed data with the following objectives:
          1.   To provide a visual device to judge whether it is a good fit or not.
          2.   Use to estimate the characteristics of the population.




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