Note that there are some duplicate events in the given distribution. I'm guessing you meant to describe the table below:

(imagine there are horizontal lines separating the rows in the table; for whatever reason, the command for making these lines doesn't work on this site)
The covariance is

which follows from



The correlation is

since


because


Next, recall that

where

Then we have, for instance,

so that

and so

You can similarly compute each conditional probability to find the the remaining conditional expectations.


