Stat 5101 (Geyer) Midterm 2
This is a multivariate change of variable problem (Section 12.1 in Lindgren).
The first step is to solve for the old variables in terms of the new variables.
Clearly
This is a job for the ``recognizing the unnormalized density'' trick.
First
If we recognize the integrand as a
density, we see the integral must give
Let X be the random variable in question.
The count of points occurring in a fixed time interval of length t for
a Poisson process with rate parameter
is
.
Here
per day and t = 7 days. Thus the answer
is
.
The waiting and interarrival times T1, T2,
for a Poisson
process with rate parameter
are i. i. d.
.
The sum
has a
distribution
(the ``reproductive rule'' for the exponential distribution). Here n = 10.
Thus the answer is
if we measure S in days.
For this part we have to recognize Bernoulli random variables.
Let Yi be a Bernoulli random variable that indicates the absence of
accidents in the i-th week, that is,
Also n = 20. Thus the answer is
.
The distribution of X is
with n = 100and
.
The mean and variance of X are
The CLT applied to the ``reproductive rule'' for the Bernoulli distribution
says that X is approximately normal for large n
The marginal p. d. f. of X is
The conditional p. d. f. of Y given X is
Joint equals marginal times conditional, hence
To find the marginal of Y, integrate out X.
This integral is done by recognizing that the integrand is an unnormalized
density, which must integrate to