By theorem B, chapter 6, "Mathematical Statistics and Data Analysis", 2nd edition, John Rice, page 181, which states that the distribution of is a chi-square distribution with degrees of freedom.
Hence
Since is not random, then applying the property that when is not random to the above, where in this case and rearranging, we obtain
However, , hence
Let
Find moment generation function
To find , and noting that and we obtain2
Due to symmetry of normal distribution and since is positive always the above can be written as3
Hence
The limit of the above as is . Therefore
We see now that and , therefore (this means all sums add to same value for large , did I make a mistake? I did not expect this). Hence
For pivotal term use , where is sample variance is population variance, and hence we write (following class notes on 10/29/07) the confidence interval as
Where from table A7, for normal r.v. at and Where
Hence the C.I. becomes
Where the sample variance , and
For confidence, . Hence the the final answer for the C.I. is
Not sure what more I can do with the above so I think I will stop here.
First find the joint density of . Since are independent, then the joint density over and
But and , hence the joint density is (after substituting for is
Now Let , and let
Hence
| (1) |
Where
so
Hence, from (1) and substitute and , we obtain
Hence the marginal density
Then
Now Gamma distribution is , hence if we replace and then we have
To simplify further,
But , hence
Hence the pdf of is
To verify this is a pdf, I integrate it from to to see if I get 1:
Here is a plot of the distribution
Another attempt at problem (2)
By definition, the CDF of is
Since we obtain
| (2) |
Now I need to combine (1) and (2). I am not sure how.
But central limit theorem tells us that as gets large, the distribution of the sample mean approach normal distribution with mean and variance , hence , hence the above becomes