MATH 2421: Lecture 17

Date: 2024-11-04 11:44:02

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summary

❓Questions
  • ❓ does implies pairwise independence, etc.?
    • 👨‍🏫 Yes. As the condition is , it's fine

Notes

Independent Random Variables (cont.)
  • More than 2 r.v.

    • joint pdf of multiple r.v. (e.g. ) can be described as:
    • multiple cont. r.v. (e.g. ) are independent if, :
  • Examples

    • suppose : independent standard normal dist.
      • find: joint Pdf of
      • from independence:
    • let be independent & uniformly distributed over
      • compute
Sum of Independent random Variables
  • X, Y being continuous & independent

    • theorem: on independence, for
      • following:
        • ⭐👨‍🏫 important
      • : "convolution of "
    • proof
    • some of 2 important Gamma d.v.
      • then
    • proof
    • ⭐👨‍🏫 sum of independent normal r.v.
      • for where
      • use linearity
    • d
  • X, Y being discrete & independent

    • pmf of , each being discrete r.v.:
    • similarly, for continuous r.v.:
  • Exercises

    • X+t\leq (0,2)2-xd_{X+Y}(x,) w/ triangular dist."
      • : dimctop smooth triangular
    • basketball team: plays a 44-game season
      • 26 games: against class A; 18: against class B
      • chance of against class A:
      • chance of against class B:
      • result of different games: independent
      • : no. of wins against class
      • compute or (👨‍🏫 either works)
        • 👨‍🏫 use normal approximate
        • sum of independent normal: normal dist.
      • compute
        • then
    • sum of 2 indep. binomial r.v.
      • , indep.
      • find pmf of
    • s