Sunday, October 20, 2019
Moment Generating Function for Binomial Distribution
Moment Generating Function for Binomial Distribution          The mean and the variance of a random variable X with a binomial probability distribution can be difficult to calculate directly. Although it can be clear what needs to be done in using the definition of the expected value of X and X2, the actual execution of these steps is a tricky juggling of algebra and summations. An alternate way to determine the mean and variance of a binomial distribution is to use the moment generating function for X.          Binomial Random Variable      Start with the random variable X and describe the probability distribution more specifically. Perform n independent Bernoulli trials, each of which has probability of success p and probability of failure 1 - p. Thus the probability mass function is         f (x)  C(n , x)px(1 ââ¬â p)n - x         Here the term C(n , x) denotes the number of combinations of n elements taken x at a time, and x can take the values 0, 1, 2, 3, . . ., n.          Moment Generating Function      Use this probability mass function to obtain the moment generating function of X:         M(t)  à £x  0n etxC(n,x))px(1 ââ¬â p)n - x.         It becomes clear that you can combine the terms with exponent of x:         M(t)  à £x  0n (pet)xC(n,x))(1 ââ¬â p)n - x.         Furthermore, by use of the binomial formula, the above expression is simply:         M(t)  [(1 ââ¬â p)  pet]n.          Calculation of the Mean      In order to find the mean and variance, youll need to know both Mââ¬â¢(0) and Mââ¬â¢Ã¢â¬â¢(0). Begin by calculating your derivatives, and then evaluate each of them at t  0.         You will see that the first derivative of the moment generating function is:         Mââ¬â¢(t)  n(pet)[(1 ââ¬â p)  pet]n - 1.         From this, you can calculate the mean of the probability distribution. M(0)  n(pe0)[(1 ââ¬â p)  pe0]n - 1  np. This matches the expression that we obtained directly from the definition of the mean.          Calculation of the Variance      The calculation of the variance is performed in a similar manner. First, differentiate the moment generating function again, and then we evaluate this derivative at t  0. Here youll see that         Mââ¬â¢Ã¢â¬â¢(t)  n(n - 1)(pet)2[(1 ââ¬â p)  pet]n - 2  n(pet)[(1 ââ¬â p)  pet]n - 1.         To calculate the variance of this random variable you need to find Mââ¬â¢Ã¢â¬â¢(t). Here you have Mââ¬â¢Ã¢â¬â¢(0)  n(n - 1)p2 np. The variance ÃÆ'2 of your distribution is         ÃÆ'2  Mââ¬â¢Ã¢â¬â¢(0) ââ¬â [Mââ¬â¢(0)]2  n(n - 1)p2 np - (np)2  np(1 - p).         Although this method is somewhat involved, it is not as complicated as calculating the mean and variance directly from the probability mass function.    
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