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In the (approximate) Poisson process with mean , we have seen that the waiting time until the first change has an exponential distribution . Let now W denote the waiting time until the th change occurs and let find the distribution of W . The distribution function of W ,when is given by
since the number of changes in the interval has a Poisson distribution with mean . Because W is a continuous-type random variable, is equal to the p.d.f. of W whenever this derivative exists. We have, provided w >0, that
This integral is positive for , because the integrand id positive. Values of it are often given in a table of integrals. If , integration of gamma fnction of t by parts yields
Let and . Whenever , a positive integer, we have, be repeated application of , that
However,
Thus when n is a positive integer, we have that ; and, for this reason, the gamma is called the generalized factorial .
Incidentally, corresponds to 0!, and we have noted that , which is consistent with earlier discussions.
The random variable x has a gamma distribution if its p.d.f. is defined by
Hence, w , the waiting time until the th change in a Poisson process, has a gamma distribution with parameters and .
Function actually has the properties of a p.d.f., because and
which, by the change of variables equals
The mean and variance are: and .
Suppose that an average of 30 customers per hour arrive at a shop in accordance with Poisson process. That is, if a minute is our unit, then . What is the probability that the shopkeeper will wait more than 5 minutes before both of the first two customers arrive? If X denotes the waiting time in minutes until the second customer arrives, then X has a gamma distribution with Hence,
We could also have used equation with , because is an integer Thus, with x =5, =2, and , this is equal to
Let now consider the special case of the gamma distribution that plays an important role in statistics.
The mean and the variance of this chi-square distributions are
and
That is, the mean equals the number of degrees of freedom and the variance equals twice the number of degrees of freedom.
In the fugure 2 the graphs of chi-square p.d.f. for r =2,3,5, and 8 are given.
Because the chi-square distribution is so important in applications, tables have been prepared giving the values of the distribution function for selected value of r and x ,
Let X have a chi-square distribution with r =5 degrees of freedom. Then, using tabularized values,
and
If X is , two constants, a and b , such that , are a =1.690 and b =16.01.
Other constants a and b can be found, this above are only restricted in choices by the limited table.
Probabilities like that in Example 4 are so important in statistical applications that one uses special symbols for a and b . Let be a positive probability (that is usually less than 0.5) and let X have a chi-square distribution with r degrees of freedom. Then is a number such that
That is, is the 100(1- ) percentile (or upper 100a percent point) of the chi-square distribution with r degrees of freedom. Then the 100 percentile is the number such that . This is, the probability to the right of is 1- . SEE fugure 3 .
Let X have a chi-square distribution with seven degrees of freedom. Then, using tabularized values, and These are the points that are indicated on Figure 3.
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