1 / 38

Section 5.3

Section 5.3. Conditional Probability: What’s the Probability of A, Given B?. Conditional Probability. For events A and B, the conditional probability of event A, given that event B has occurred is:. Conditional Probability. Example: What are the Chances of a Taxpayer being Audited?.

tanith
Télécharger la présentation

Section 5.3

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Section 5.3 Conditional Probability: What’s the Probability of A, Given B?

  2. Conditional Probability • For events A and B, the conditional probability of event A, given that event B has occurred is:

  3. Conditional Probability

  4. Example: What are the Chances of a Taxpayer being Audited?

  5. Example: Probabilities of a Taxpayer Being Audited

  6. Example: Probabilities of a Taxpayer Being Audited • What was the probability of being audited, given that the income was ≥ $100,000? • Event A: Taxpayer is audited • Event B: Taxpayer’s income ≥ $100,000

  7. Example: Probabilities of a Taxpayer Being Audited

  8. Example: The Triple Blood Test for Down Syndrome • A positive test result states that the condition is present • A negative test result states that the condition is not present

  9. Example: The Triple Blood Test for Down Syndrome • False Positive: Test states the condition is present, but it is actually absent • False Negative: Test states the condition is absent, but it is actually present

  10. Example: The Triple Blood Test for Down Syndrome • A study of 5282 women aged 35 or over analyzed the Triple Blood Test to test its accuracy

  11. Example: The Triple Blood Test for Down Syndrome

  12. Example: The Triple Blood Test for Down Syndrome • Assuming the sample is representative of the population, find the estimated probability of a positive test for a randomly chosen pregnant woman 35 years or older

  13. Example: The Triple Blood Test for Down Syndrome • P(POS) = 1355/5282 = 0.257

  14. Example: The Triple Blood Test for Down Syndrome • Given that the diagnostic test result is positive, find the estimated probability that Down syndrome truly is present

  15. Example: The Triple Blood Test for Down Syndrome

  16. Example: The Triple Blood Test for Down Syndrome • Summary: Of the women who tested positive, fewer than 4% actually had fetuses with Down syndrome

  17. Multiplication Rule for Finding P(A and B) • For events A and B, the probability that A and B both occur equals: • P(A and B) = P(A|B) x P(B) also • P(A and B) = P(B|A) x P(A)

  18. Example: How Likely is a Double Fault in Tennis? • Roger Federer – 2004 men’s champion in the Wimbledon tennis tournament • He made 64% of his first serves • He faulted on the first serve 36% of the time • Given that he made a fault with his first serve, he made a fault on his second serve only 6% of the time

  19. Example: How Likely is a Double Fault in Tennis? • Assuming these are typical of his serving performance, when he serves, what is the probability that he makes a double fault?

  20. Example: How Likely is a Double Fault in Tennis? • P(F1) = 0.36 • P(F2|F1) = 0.06 • P(F1 and F2) = P(F2|F1) x P(F1) = 0.06 x 0.36 = 0.02

  21. Sampling Without Replacement • Once subjects are selected from a population, they are not eligible to be selected again

  22. Example: How Likely Are You to Win the Lotto? • In Georgia’s Lotto, 6 numbers are randomly sampled without replacement from the integers 1 to 49 • You buy a Lotto ticket. What is the probability that it is the winning ticket?

  23. Example: How Likely Are You to Win the Lotto? • P(have all 6 numbers) = P(have 1st and 2nd and 3rd and 4th and 5th and 6th) = P(have 1st)xP(have 2nd|have 1st)xP(have 3rd| have 1st and 2nd) …P(have 6th|have 1st, 2nd, 3rd, 4th, 5th)

  24. Example: How Likely Are You to Win the Lotto? 6/49 x 5/48 x 4/47 x 3/46 x 2/45 x 1/44 = 0.00000007

  25. Independent Events Defined Using Conditional Probabilities • Two events A and B are independent if the probability that one occurs is not affected by whether or not the other event occurs

  26. Independent Events Defined Using Conditional Probabilities • Events A and B are independent if: P(A|B) = P(A) • If this holds, then also P(B|A) = P(B) • Also, P(A and B) = P(A) x P(B)

  27. Checking for Independence • Here are three ways to check whether events A and B are independent: • Is P(A|B) = P(A)? • Is P(B|A) = P(B)? • Is P(A and B) = P(A) x P(B)? • If any of these is true, the others are also true and the events A and B are independent

  28. Example: How to Check Whether Two Events are Independent • The diagnostic blood test for Down syndrome: POS = positive result NEG = negative result D = Down Syndrome DC = Unaffected

  29. Example: How to Check Whether Two Events are Independent Blood Test:

  30. Example: How to Check Whether Two Events are Independent • Are the events POS and D independent or dependent? • Is P(POS|D) = P(POS)?

  31. Example: How to Check Whether Two Events are Independent • Is P(POS|D) = P(POS)? • P(POS|D) =P(POS and D)/P(D) = 0.009/0.010 = 0.90 • P(POS) = 0.256 • The events POS and D are dependent

  32. Section 5.4 Applying the Probability Rules

  33. Is a “Coincidence” Truly an Unusual Event? • The law of very large numbers states that if something has a very large number of opportunities to happen, occasionally it will happen, even if it seems highly unusual

  34. Example: Is a Matching Birthday Surprising? • What is the probability that at least two students in a group of 25 students have the same birthday?

  35. Example: Is a Matching Birthday Surprising? • P(at least one match) = 1 – P(no matches)

  36. Example: Is a Matching Birthday Surprising? • P(no matches) = P(students 1 and 2 and 3 …and 25 have different birthdays)

  37. Example: Is a Matching Birthday Surprising? • P(no matches) = (365/365) x (364/365) x (363/365) x … x (341/365) • P(no matches) = 0.43

  38. Example: Is a Matching Birthday Surprising? • P(at least one match) = 1 – P(no matches) = 1 – 0.43 = 0.57

More Related