MATH 2421: Tutorial 11
Date: 2024-11-26 18:03:39
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Tutorial
- conditional expectation & variance
- conditional expectation
- law of total expectation
- 👨🏫 idea: separating randomness
- then
- 👨🏫 idea: separating randomness
- conditional variance
- moment generating function
- if independent:
- uniqueness: MGF determines distribution uniquely
- i.e. if two r.v. have same MGF: then same distribution
- law of large number (LLN)
- if : i.i.d. r.v. w/
- i.e. convergence in probability
- a.s.: almost sure
- convergence in probability
- 👨🏫 probability of not converging = 0
- 👨🏫 for stronger result, a stronger assumption is needed
- can be computed without knowing the distribution of individual r.v.
- must exist, though
- if : i.i.d. r.v. w/
- central limit theorem (CLT)
- if : i.i.d. r.v. w/
- i.e. convergence in distribution
- strength of convergence: almost sure > in probability > in distribution
- one on the left: implies one on the right
- conditional expectation & variance
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Examples
- skipped
- solution
- let
- show: w/ distribution
- for all
- idea: law of total probability, solving one by one
- explanation: set
- integrate both sides to show: one converges to
- consider: a very simple case for intuition
- :
- let
- Poisson w/
- show:
- Poisson's MGF: