Sample spaces can be either finite or infinite. Give examples
of either. Discuss countable and uncountable sample spaces.
Find a scheme using which one can determine the probability of
drawing each integer from the set of all integers.
1.
Read Rissanen (1983), ``A universal prior for integers'' (1st
pass).
2.
Progressions and convergent series. Their use in
determining distributions.
3.
Discrete case: The Binomial (Bernoulli) distribution. The
probability of getting r successes P(r) in n trials where
p = probability of getting one success and q = 1-p.
where E[X] is the expected number of successes.
4.
A discrete case with infinite sample space: The Poisson
distribution. If
is a positive number, then
For example,
where .
1.
Discuss uncountable sample spaces, continuous variables and
their distributions.
2.
The Normal (Gaussian) distribution. Use this when the
variance ()
of a binomial distribution .
3.
4.
Expectation: The expected value of a function f(x) where x
is a random variable taking values from a space X is:
For example:
Find the expected winning in a gamble of tossing an unbiased
coin where it costs $10 to enter and the prize is $20. What if the
entry fee was lower or higher and the prize was the same?
Find the expected winning in a game where you get
if you
throw a head for the first time on the kth toss of an unbiased coin.
Does it matter what the entry fee is? (The St. Petersburg paradox).
5.
The Central Limit Theorem: A sum of a large number of
independent identically distributed random variables follows a
distribution that is approximately Normal.