30.9 IMPORTANT CONTINUOUS DISTRIBUTIONS
0
0
0. 2
0. 4
0. 6
0. 8
1
1
2 3 4
y
g(y)
μ=0,σ=0
μ=0,σ=0. 5
μ=0,σ=1. 5
μ=1,σ=1
Figure 30.15 The PDFg(y) for the log-normal distribution for various values
of the parametersμandσ.
The probability that an event occurs in the next infinitestimal interval [x, x+dx]
is given byλdx,sothat
Pr(the first event occurs in interval [x, x+dx]) =e−λxλdx.
Hence the required probability density function is given by
f(x)=λe−λx.
The expectation and variance of the exponential distribution can be evaluated as
1 /λand (1/λ)^2 respectively. The MGF is given by
M(t)=
λ
λ−t
. (30.117)
We may generalise the above discussion to obtain the PDF for the interval
between everyrth event in a Poisson process or, equivalently, the interval (waiting
time) before therth event. We begin by using the Poisson distribution to give
Pr(r−1 events occur in intervalx)=e−λx
(λx)r−^1
(r−1)!
,
from which we obtain
Pr(rth event occurs in the interval [x, x+dx]) =e−λx
(λx)r−^1
(r−1)!
λdx.
Thus the required PDF is
f(x)=
λ
(r−1)!
(λx)r−^1 e−λx, (30.118)
which is known as thegamma distributionof orderrwith parameterλ. Although
our derivation applies only whenris a positive integer, the gamma distribution is