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Quantitative Techniques – I




                    Notes          10.  Theoretical probability distribution gives us a law according to which different values of
                                       the random variable are distributed with non-specified probabilities.

                                   13.3 Fitting of Binomial Distribution


                                   The fitting of a distribution to given data implies the determination of expected (or theoretical)
                                   frequencies for different values of the random variable on the basis of this data.
                                   The purpose of fitting a distribution is to examine whether the observed frequency distribution
                                   can be regarded as a sample from a population with a known probability distribution.
                                   To fit a binomial distribution to the given data, we find its mean. Given the value of n, we can
                                   compute the value of p and, using n and p, the probabilities of various values of the random
                                   variable. These probabilities are multiplied by total frequency to give the required expected
                                   frequencies. In certain cases, the value of p may be determined by the given conditions of the
                                   experiment.


                                          Example: The following data give the number of seeds germinating (X) out of 10 on
                                   damp filter for 80 sets of seed. Fit a binomial distribution to the data.
                                                     X : 0    1   2   3  4 5 6 7 8 9 10
                                                     f  : 6 20 28 12 8 6 0 0 0 0           0
                                   Solution:
                                   Here the random variable X denotes the number of seeds germinating out of a set of 10 seeds.
                                   The total number of trials n = 10.

                                                             0 6 1 20 2 28 3 12 4 8 5 6        174
                                   The mean of the given data  X                                    2.175
                                                                            80                 80
                                                                                              2.175
                                   Since mean of a binomial distribution is np,   np = 2.175. Thus, we get   p  0.22 (approx.)
                                                                                               10
                                   Further, q = 1 - 0.22 = 0.78.
                                                                     10       X     10 X
                                   Using these values, we can compute  P X  C  X  0.22  0.78   and then expected frequency
                                   [= N × P(X)] for X = 0, 1, 2, ...... 10. The calculated probabilities and the respective  expected
                                   frequencies are shown in the following table:

                                                            Approximated                      Approximated
                                          X  P X   N  P X                 X   P X    N  P X
                                                               Frequency                        Frequency
                                         0   0.0834   6.67        6       6   0.0088   0.71        1
                                         1   0.2351  18.81       19       7   0.0014   0.11        0
                                         2   0.2984  23.87       24       8   0.0001   0.01        0
                                         3   0.2244  17.96       18       9   0.0000   0.00        0
                                         4   0.1108  8.86         9      10   0.0000   0.00        0
                                         5   0.0375  3.00         3     Total  1.0000             80

                                   13.3.1 Features of Binomial Distribution

                                   1.  It is a discrete probability distribution.
                                   2.  It depends upon two parameters n and p. It may be pointed out that a distribution  is
                                       known if the values of its parameters are known.



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