MATH 2421: Lecture 7

Date: 2024-09-25 12:07:25

Reviewed:

Topic / Chapter:

summary

❓Questions
  • ❓ can we say is independent of itself?
    • πŸ‘¨β€πŸ« only if

Notes

Independence (cont.)
  • Independence (cont.)

    • three events: independent iff:
      • last three: pairwise independent
    • if independent => independent of any objects formed of
      • as:
      • as:
    • events are independent, if:
      • sub-collection of
          • for
      • for , verify:
        • ; condition
        • ; conditions
          • and similarly so one
        • ; conditions
          • // pairwise independent
  • Examples

    • two fair dice: thrown
      • : sum of dice = 7
      • : first dice = 4
      • : second dice = 3
      • yet
        • dependent on
    • loaded coin w/
      • loaded coin: tossed times
      • probability of getting at least 1 head in these tosses?
      • probability of getting exactly head in these tosses?
        • if first tosses: give heads
          • remaining tosses: all tail
        • event:
          • and there are ways to choose it
        • thus final solution:
    • system: of independent components
      • is parallel if it functions when at least one component functions
      • if component functions in
      • then what is the probability that the system functions?
Random Variables: Def. of Random Variables
  • Introduction

    • Need for random variable
      • often: we are interested in some function / expression of outcome
      • rather than outcome itself
      • e.g. roll a pair of dice; what is the distribution of two faces' sum?
        • i.e. not interested in face of each die
        • function:
        • range:
    • 20 questions in a MCQ. Each question w/ 5 alternatives
      • student: answers all 20 questions randomly
      • independently choose one alternative in each questions
      • interested in: no. of correct answers
  • Random variables

    • random variable: mapping from sample space to real numbers
      • rv: random variables
      • denoted by capitals,
    • discrete random variable
      • rv w/ finite || countable range
      • e.g. number of defective items
    • continuous random variable
      • range: an interval over the real line
      • weight of an item, time taken, etc.
  • Examples

    • urn: w/ 20 chips w/ number
      • three chips: chosen at random
      • : largest among the three chips
      • then, what's the range of ?
        • (discrete)
    • toss 3 coins. : no. of heads appearing
      • (discrete)
        • partition of
    • from above urn, compute the probability of
        • choose , and 2 other that is smaller that
        • i.e. within
    • three balls: randomly chosen from urn w/ 3W, 3R, 5B balls
      • we win 1 per R ball chosen.
      • : total winnings of the experiment
      • compute respective probability for all domain of
      • and
      • probability of winning money
Discrete Random Variables
  • Discrete random variables

    • rv: discrete if range of : either finite / countably infinite
      • using: capital for variable
      • and for value
    • suppose rv is discrete, taking value of
      • probability mass function of , is
        • for PMF: range must be well-determined
        • PMF: fully characterizes a rv
        • can be notated as
    • properties of PMF
      • for
      • for other values of
        • domain of pMF itself: entire real line
      • ⭐ since must take on one of the values of
  • Examples

    • rv : only takes value if is of the form
      • where : fixed positive value; : suitably chosen constant
        • : also known as a normalizing constant
      • a) what is this suitable constant
        • as
          • Taylor series
          • πŸ‘¨β€πŸ« sometimes, is almost impossible to calculate
      • b) compute
      • c) compute