Math 2421: Lecture 20

Date: 2024-11-13 12:01:10

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Expectation of Sum of Random Variables
  • Example

    • people: throw their hats to center of a room
      • hats: mixed up, find expected no. of people getting back their own hats
    • suppose: different types of coupons exists
      • and each time: obtaining a coupon is equally likely to be any of types
      • find: expected no. of different types with run
        • denote answer by
          • for
        • : 1 if -th type is contained in the company
      • find expected no. of coupons needed before completing at lease one set of each type
        • let : no. of coupons needed to get a complete set
        • : no. of coupons you need in order to get a first new type
        • : no. of coupons you need in order to get a second a new type (after )
        • : no. of coupons to get a new type after collecting types
          • where success probability
        • thus:
Covariance, Variance of Sums, and Correlations
  • Covariance

    • covariance of jointly distributed r.v. :
      • measures: how vary together
    • common formula
      • if, for larger value of : corresponds to larger values of
        • then
        • else:
    • remark: if , : correlated
      • else: : uncorrelated
    • correlation: does not imply causation
    • theorem:
      • similar to
    • proof
    • theorem: if independent, then for any , we have
    • theorem: if independent: then
      • 👨‍🏫 however: doesn't mean that are independent
    • proof: set some s.t. , and let dependent on
      • and let always
      • then
    • theorem:
    • proof:
    • w/ independent
      • under independence:
    • proof:
  • Properties of covariance

    • 👨‍🏫 no independence assumed
    • d
  • Covariance

  • Example

    • sample variance
      • is called deviation
      • sample variance:
      • find
        • w/ independence:
      • find
      • thus, sample variance w/ is a good estimator