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Chapter 13 Probability Rules!.

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Presentation on theme: "Chapter 13 Probability Rules!."— Presentation transcript:

1 Chapter 13 Probability Rules!

2 Objectives: The student will be able to:
Apply the General Addition and General Multiplication rules. Compute conditional probabilities and use the rule to test for independence. Use a tree diagram to understand conditional probabilities and to reverse conditioning.

3 13.1 The General Addition Rule

4 Or But Not Disjoint Your Wallet S = {$1, $2, $5, $10, $20, $50, $100}
A = {odd numbered value} = {$1, $5} B = {bill with a building} = {$5, $10, $20, $50, $100} Why is P(A or B) ≠ P(A) + P(B)? Answer: A and B are not disjoint. The intersection A and B = {$5} is double counted. To find P(A or B), subtract P(A and B).

5 The General Addition Rule
P(A or B) = P(A) + P(B) – P(A and B) The General Addition Rule in words: Add the probabilities of the two events and then subtract the probability of their intersection. P(odd amount or bill with a building) = P(A) + P(B) – P(A and B} = P({$1, $5}) + P({$5, $10, $20, $50, $100}) – P({$5})

6 General Addition Rule Example
Survey Are you currently in a relationship? Are you involved in sports? Results 33% are in a relationship. 25% are involved in sports. 11% answered “yes” to both. Problem Find the probability that a randomly selected student is in a relationship or is involved in sports.

7 33% Relationship, 25% Sport, 11% Both
Events R = {in a relationship} S = {involved in sports} Calculations P(R or S) = P(R) + P(S) – P(R and S) = – = 0.47 Conclusion There is a 47% chance that a randomly selected student is in a relationship or is involved sports.

8 Using Venn Diagrams P(not in relationship and no sports) P(RC and SC)
This is the part outside of both circles: P(in a relationship but no sports) P(R and SC) This is the part in the circle R that is outside S: P(in a relationship or involved in sports but not both) P((R and SC) or (RC and S)) This is the combination of the circles minus the intersection: = 0.36

9 E-mail or Text? 73% use e-mail, 62% text, 49% do both
Find the probability that a randomly selected person: Either texts or s? Either texts or s, but not both? Doesn’t use and doesn’t text? Think → Plan: A = {uses } B = {texts}

10 73% Use E-mail, 62% Text, 49% Both
Think → Plot: P(A) = 0.73 P(B) = 0.62 P(A and B) = 0.49 P(A and BC) = 0.73 – 0.49 = 0.24 P(AC and B) = 0.62 – 0.49 = 0.13 P(AC and BC) = 1 – ( ) = 0.14

11 73% Use E-mail, 62% Text, 49% Both
1. P(text or ) Show → Mechanics P(A or B) = P(A) + P(B) – P(A and B) = – = 0.86 Tell → Conclusion: 86% send text messages or .

12 73% Use E-mail, 62% Text, 49% Both
2. P(text or but not both) Show → Mechanics P(A or B) – P(A and B) = 0.86 – 0.49 = 0.37 P((A and BC) or (AC and B)) = = 0.37 Tell → Conclusion: 37% send text messages or , but not both.

13 73% Use E-mail, 62% Text, 49% Both
3. P(neither text nor ) Show → Mechanics 1 – P(A or B) = 1 – 0.86 = 0.14 P(AC and BC) = 0.14 Tell → Conclusion: 14% neither text nor .

14 Example Example: 50% of the students in statistics have taken another college math class, 60% have taken an English class, and 30% have taken both. What is the probability that a student chosen at random has taken a math or an English class? Hint: use a Venn Diagram to help!

15 Practice College dorm rooms on a large college campus had the following: 38% refrigerators, 52% tvs, and 21% had both. What is the probability that a randomly selected dorm room had: A tv but no refrigerator? A TV or a refrigerator but not both? Neither a tv nor a refrigerator? Employment data at a large company revealed that 72% of workers are married, 44% are college graduates, and half of the college graduates are married. What’s the probability that a randomly selected worker Is neither married nor a college graduate? Is married but not a college graduate? Is married or a college graduate?

16 13.2 Conditional Probability and the General Multiplication Rule

17 Contingency Table A table that displays the results of two categorical questions is called a contingency table. P(girl) = 251/478 = 0.525 P(girl and popular) = 91/478 = 0.190 P(sports) = 90/478 = 0.188

18 Conditional Probability
What if we knew the chosen person was a girl? Would that change the probability that the girl’s goal was sports? Yes! We write P(sports | girl) Only look at Girl row: P(sports | girl) = 30/251 = 0.120 Find the probability of selecting a boy given the goal is grades. P(boy | grades) = 117/247 = 0.474

19 Conditional Probability Formula
Probability of B Given A: Example: P(girl | popular) =

20 What is the probability that a man has both conditions?
The probabilities that an adult man has high blood pressure and/or high cholesterol are shown in the table: What is the probability that a man has both conditions? What is the probability that he has high blood pressure? What is the probability that a man with high blood pressure has high cholesterol What’s the probability that a man has high blood pressure if it’s known that he has high cholesterol? High BP OK BP High Chol. 0.11 0.21 OK. Chol. 0.16 0.52

21 College Students: Relationships and Sports
33% in relationships, 25% in sports, 11% in both If you see a student athlete, what is the probability that this athlete is in a relationship? P(R) = 0.33, P(S) = 0.25, P(R and S) = 0.11 There is a 0.44 probability the student involved in sports is in a relationship. Notice this is higher than the probability for the general student (0.33).

22 The General Multiplication Rule
For A and B independent, we had: P(A and B) = P(A) × P(B) Rearranging the conditional probability equation, we get the General Multiplication Rule: P(A and B) = P(A) × P(B | A) Equivalently, P(A and B) = P(B) × P(A | B)

23 Examples: General Multiplication Rule: P(A and B) = P(A) × P(B | A)
Suppose the probability of a child having a cold is 0.1 and the probability of a child having a fever if s/he has a cold is What is the probability that child has both a cold and a fever? Suppose there are 5 marbles in a jar, 2 green, 2 yellow, and 1 red. If I draw 2 without replacing the marbles, what is the probability that both are green?

24 More practice Given a standard deck of 52 cards: (13 cards of each suit: hearts, spades, clubs, and diamonds) If I draw 3 cards without replacement… What is the probability of drawing 3 red cards? What is the probability that the first heart I draw is on my third draw?

25 13.3 Independence

26 Definition of Independence
Events A and B are independent if knowing A happened does not change the probability of B. In symbols: A and B are independent ↔ P(B | A) = P(B) Equivalent formulas for independence: P(A | B) = P(A) P(A and B) = P(A) × P(B)

27 Grades and Girl Independent?
Determine if the goal of good grades and sex are independent. P(grades | girl) = 130/251 ≈ 0.52 P(grades) = 247/478 ≈ 0.52 To two decimal places, they are independent. Are the goal of sports and sex independent? P(sports | boy) = 60/227 ≈ 0.26 P(sports) = 90/478 ≈ 0.19 No, the goal of sports and sex are dependent.

28 Relationships, Sports, and Independence
33% in a relationship, 25% involved in sports, 11% both Are being in a relationship and being involved in sports independent? P(relationship) = 0.33 P(sports) = 0.25 P(relationship and sports) = 0.11 0.33 × = ≠ 0.11 No, they are dependent. Are they disjoint? P(relationship and sports) = 0.11 ≠ 0 No, they are not disjoint.

29 Independent ≠ Disjoint
Disjoint events cannot be independent. Consider the events: Course grade A Course grade B Disjoint: You can’t get both. Not independent: P(A | B) = 0 ≠ P(A) A and B are disjoint (also called mutually exclusive) but not independent.

30 Examples – Testing for Independence
If you draw a card at random from a well-shuffled deck is the probability of getting an ace independent of the suit? E.g. Does P(ace) = P(ace | suit is hearts)? Approximately 58.2% of US adults have both a landline an a cell phone. 2.8% have only cell phone, 1.6% have no phone service at all What proportion of US households have a landline? Are having a cell phone and having a landline independent? Does P(cell phone)=P(cell phone | have a landline)? Or P(landline)=P(landline | cell phone)?

31 13.4 Picturing Probability

32 Tree Diagrams 44% binge drink, 37% drink moderately, 19% don’t drink
Binge drinkers: 17% in an alcohol related accident Non-bingers: 9% in an alcohol-related accident Find the probability of being a binge drinker and has had an alcohol-related accident. Venn diagrams and tables are not great for conditional probabilities. Use a tree diagram.

33 Tree Diagrams The three branches are shown.
This tree diagram gives the complete information. Notice the sums: = 1 = 1 = 1 = 1 Conditional Probabilities: P(none | binge) = 0.83.

34 Probabilities From Trees
P(moderate and accident) = × = P(abstain and accident) = × = 0 P(none) = (0.44 × 0.83) (0.37 × 0.91) + (0.19 × 1.0) =

35 Tree Diagram Facts The sum of the probabilities emanating from any branch is 1. The final outcomes are disjoint. To find a conditional probability, multiply across.

36 13.5 Reversing the Conditioning and Bayes’ Rule

37 Going Backwards Find P(binge | accident)
Work backwards through the tree

38 Bayes’ Rule for Two Branches
Used for reversing the condition Expressed as an algebraic formula instead of a tree The tree is easier to use. A longer version works for more than 2 branches.

39 Tree Diagrams Practice – text #42 using a tree diagram
An airline offers discounted “advance-purchase” fares to customers who buy tickets more than 30 days before travel and charges “regular” fares for tickets purchased during those last 30 days. The company has noticed that 60%of its customers buy advance purchase tickets. The “no-show” rate among people who purchase regular tickets is 30% but only 5% of customers with advance tickets are no-shows. What percent of all ticket holders are no-shows? What’s the probability that an customer who didn’t show had an advance-purchase ticket? Is being a no-show independent of the type of ticket a passenger holds?

40 TB Tests Think → Plan: TB →has tuberculosis, + → tests positive
False Positive: P(+ | TBC) = 0.01 False Negative: P(− | TB) = 0.001 Has TB: P(TB) = Probability of having TB given a positive test = ? P(TB | +) = ?

41 Show → Plot Use the Complement Rule. Use the Multiplication Rule.
× = , etc. Mechanics P(+) = P(+ | TB) + P(+ | TBC) = =

42 P(TB | +) = ? Show → Mechanics P(+) = 0.01004945 P(TB | +) =
Tell → Conclusion The probability of having TB after a positive test is less than 0.5%.

43 Reversing the Conditioning (cont.)
Practice: #46 Suppose a polygraph can detect 65% of lies, but incorrectly identifies 15% of true statements as lies A certain company believes that 95%of its job applicants are trustworthy. The company gives everyone a polygraph. What is the probability that a job applicant rejected due to failing the polygraph was actually trustworthy? Want: P(trustworthy | failed polygraph)

44 Wear a Seatbelt! In 77% of accidents, driver was wearing a seatbelt.
92% of those drivers escaped serious injury. 63% of non-belted drivers escaped serious injury. Question: Find the probability a driver who was seriously injured wasn’t wearing a seatbelt? B = Wore a seatbelt NB = Did not wear a seatbelt I = Serious injury OK = No Serious injury P(NB | I) = ?

45 Wear a Seatbelt! Answer We have: P(B) = 0.77, P(NB) = 0.23, P(OK | B) = 0.92, P(I | B) = P(OK | NB) = 0.63, P(I | NB) = 0.37

46 Wear a Seatbelt! Conclusion: Even though only 23% don’t wear seatbelts, they account for 58% of all the deaths and serious injuries.

47 What Can Go Wrong? Don’t use a simple probability rule where a general rule is appropriate. Don’t assume independence or disjoint until after you have done the verification. Don’t reverse conditioning naïvely. P(A | B) may not be the same as P(B | A). Don’t confuse “disjoint” with “independent.” Disjoint events cannot happen at the same time. Independent events must be able to happen at the same time.


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