MATH 2421: Lecture 5

Date: 2024-09-16 12:03:51

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Conditional Probability (cont.)
  • Theorems

    • multiplication rule
      • if , then
    • general multiplication rule
      • for events
      • 👨‍🎓 more like, nested use of multiplication rule
      • explanation
        • and cancel, cancel
        • or, as mentioned above, nested use
  • Examples

    • bin: with 25 light bulbs
      • A: 5: good & functional for more than 30 days
      • B: 10: partially defective; fail in the second day of use
      • C: rest: totally defective
      • if: a random bulb initially lights up ()
        • what is the probability of it working after 1 week? ()
    • Celine: chance of getting A in French, and chance for chemistry
      • is her decision: based on fair coin
      • what is the chance that she gets an A in chemistry?
      • Celine getting A
      • Celine taking chemistry
    • suppose: an urn w/ 8 red balls & 4 white balls
      • we draw 2 balls, one at a time, without replacement
      • assuming fair chance, what is the probability that both balls drawn are red?
      • w/ conditional probability
        • first ball drawn: red
        • second ball drawn: red
      • w/ combinatorial analysis
        • i.e. counting no. out interested outcomes / all possible outcomes
        • no. of choosing 2 red balls / no. of choosing arbitrary balls
    • three cards: selected successively at random, without replacement
      • 52 playing cards
      • calculate probability of receiving in order: K,Q, and J
      • conditional probability
      • combinatorial analysis
        • no. of outcome w/ K-Q-J / no. of total outcomes
      • box of fuses w/ 20 fuses
        • 5 are defective
        • 3 fuses: selected randomly and removed from all
        • what's the probability that all 3 are defective?
        • conditional probability
        • combinatorial analysis
      • If six cards are selected at random (without replacement) from a standard deck of 52 cards, what is the probability there will be no pairs?
        • conditional probability
          • each turn:
        • combinatorial analysis
Total Probability
  • Introduction

    • how can we compute probability under different conditions / cases?
    • e.g. probability of getting 3 on a fair die
      • case 1: 4-faced fie is chosen:
      • case 2: 6-faced fie is chosen:
      • assuming both cases happen with equal chance
  • Theorem

    • let be any two event, then
      • 👨‍🏫 or: prob. of occurs = weighted average of the conditional probabilities of
        • conditioning on either occurs or does not occur
      • proof: w/ Venn diagram
        • ,
    • partitions the sample space if:
      • they are mutually exclusive:
      • they are exhaustive:
    • law of total probability
      • if partitions the sample space and
      • let B any event, then
        • proof:
          • because
          • because
  • Examples

    • MCQ exam
      • a student: either knows the answer at probability , or guesses at probability
      • there are alternatives
      • what is the probability that he answered it correctly?
        • : student knows;
        • : student guesses:
        • : student answers correctly
      • what is the probability that the student knew the answer, given that he answered it correctly?
        • 👨‍🏫 aka: Bayes formula
    • Insurance company: categorizes people into 2 groups: accident-prone and others
      • accident-prone person: will have accident in a fixed 1 yr time with probability of 0.4
        • 0.2 for others
      • if 30% of population is accident prone, what's the change that new policyholder will have an accident within an year?
        • : person being accident prone
        • : person having accident in 1 year
    • party support
      • 40% of people support party , 30% , 20% , 10%
      • : certain policy
        • 50% of supporter supports it
        • 40% of supporter supports it
        • 30% of supporter supports it
        • 100% of supporter supports it
      • what is the probability that a random citizen supports the policy?
Bayes' Theorem
  • Introduction

    • if partitions the sample space
      • and
      • then, for any
      • proof:
        • and expand the denominator