MATH 2421: Lecture 11

Date: 2024-10-09 12:02:10

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Notes

Hypergeometric Random Variable (cont.)
  • Practice

    • purchaser of electrical component: buys in lots of size 10
      • policy: inspect 3 from a lot
      • and all must be non-defective
      • w/ 30% of lots having 4 defective components
      • and 70% w/ 1 defective component
      • what proportion of lots: does purchaser reject?
Expected Value of Sum of Random Variables
  • Expected value of sum of random variables

    • 👨‍🏫 more discussion in Ch. 7; important!
    • for a r.v. , let : val. of when being output
    • if : both r.v. their sum is also r.v.
    • : also r.v.
      • r.v.: map from sample space to real line
    • theorem: let : probability that : output of experiment
      • then
    • proof
      • suppose, for distinct values of are
      • for each : : event
        • i.e.
    • linearity of expectation
      • for r.v. (no independence req.)
    • proof
  • Practice

    • suppose: experiment consists of flipping a coin 5 times
      • result: only heads & tails
      • : no. of heads in first 3 flips
      • : no. of heads in last 2 flips
      • then - for any combination
    • suppose: two independent flip of a coin
      • head w/ probability of maid
      • : no. of heads obtained
      • thus
      • as well as
    • find: expected total no. of success from trials
      • when trial : success w/ probability
      • let
      • special case: and trials independent:
        • then
    • identical & independent trials
      • each trial: yields success w/ same
        • if success
      • proof
        • show:
        • by def. : total no. of success in independent
        • thus
        • ⭐⭐ w/ same , then always
            • where
            • and all independent
    • for
Continuous Random Variables: Introduction
  • Continuous r.v.

    • r.v. w/ range being an interval over real line
      • weight / time / length ...
      • considered separate as:
        • 👨‍🏫 you can't get exactly 30 cm long ruler, etc.
    • for a continuous r.v.
      • and thus
        • and
    • for cont. r.v. , w/ property s.t.
      • : non-negative function,
      • then: : probability density function (pdf)
    • for all
    • as:
    • distribution function (cdf): defined by
      • 👨‍🏫 same as discrete!
    • w/ fundamental theorem of calculus:
      • density: derivative of cumulative distribution function
      • (think of it as a area of small slice of rectangle)
      • : measure of how likely that r.v. will be near
        • probabilities