Terminology
1.
- P(L′) = P(S)
- P(M OR S)
- P(F AND L)
- P(M|L)
- P(L|M)
- P(S|F)
- P(F|L)
- P(F OR L)
- P(M AND S)
- P(F)
3. P(N) = [latex]\frac{{15}}{{42}}=\frac{{5}}{{14}}=0.36\\[/latex]
5. P(C) = [latex]\frac{{5}}{{42}}=0.12\\[/latex]
7. P(G) = [latex]\frac{{20}}{{150}}=\frac{{2}}{{15}}=0.13\\[/latex]
9. P(R) = [latex]\frac{{22}}{{150}}=\frac{{11}}{{75}}=0.15\\[/latex]
11. P(O) = [latex]\frac{{{22}-{38}-{20}-{28}-{26}}}{{150}}=\frac{{16}}{{150}}=\frac{{8}}{{75}}=0.11\\[/latex]
13. P(E) = [latex]\frac{{47}}{{194}}=0.24\\[/latex]
15. P(N) = [latex]\frac{{23}}{{194}}=0.12\\[/latex]
17. P(S)=[latex]\frac{{12}}{{194}}={{6}}{{97}}=0.06\\[/latex]
19. [latex]\frac{{13}}{{52}}={{1}}{{4}}=0.25\\[/latex]
21. [latex]\frac{{3}}{{6}}={{1}}{{2}}=0.5\\[/latex]
23. P(R) = [latex]\frac{{4}}{{8}}=0.5\\[/latex]
25. P(O or H)
27. P(H | I)
29. P(N | O)
31. P(I or N)
33. P(I)
35. The likelihood that an event will occur given that another event has already occurred.
37. 1
39. the probability of landing on an even number or a multiple of three
41.
- You can’t calculate the joint probability knowing the probability of both events occurring, which is not in the information given; the probabilities should be multiplied, not added; and probability is never greater than 100%
- A home run by definition is a successful hit, so he has to have at least as many successful hits as home runs.
43. P(J) = 0.3
45.
P(Q AND R) = P(Q)P(R)
0.1 = (0.4)P(R)
P(R) = 0.25
47. 0
49. 0.3571
51. 0.2142
53. Physician (83.7)
55. 83.7 − 79.6 = 4.1
57. P(Occupation < 81.3) = 0.5
59.
- P(C) = 0.4567
- not enough information
- not enough information
- No, because over half (0.51) of men have at least one false positive text
61.
- P(J OR K) = P(J) + P(K) − P(J AND K); 0.45 = 0.18 + 0.37 – P(J AND K); solve to find P(J AND K) = 0.10
- P(NOT (J AND K)) = 1 – P(J AND K) = 1 – 0.10 = 0.90
- P(NOT (J OR K)) = 1 – P(J OR K) = 1 – 0.45 = 0.55
Two Basic Rules of Probability
62. 0.376
64. C|L means, given the person chosen is a Latino Californian, the person is a registered voter who prefers life in prison without parole for a person convicted of first degree murder.
66. L AND C is the event that the person chosen is a Latino California registered voter who prefers life without parole over the death penalty for a person convicted of first degree murder.
68. 0.6492
70. No, because P(L AND C) does not equal 0.
72.
- The Forum Research surveyed 1,046 Torontonians.
- 58%
- 42% of 1,046 = 439 (rounding to the nearest integer)
- 0.57
- 0.60.
74.
P(Betting on two line that touch each other on the table) = [latex]\frac{{6}}{{38}}\\[/latex]
P(Betting on three numbers in a line) = [latex]\frac{{3}}{{38}}\\[/latex]
P(Bettting on one number) = [latex]\frac{{1}}{{38}}\\[/latex]
P(Betting on four number that touch each other to form a square) = [latex]\frac{{4}}{{38}}\\[/latex]
P(Betting on two number that touch each other on the table ) = [latex]\frac{{2}}{{38}}\\[/latex]
P(Betting on 0-00-1-2-3) = [latex]\frac{{5}}{{38}}\\[/latex]
P(Betting on 0-1-2; or 0-00-2; or 00-2-3) = [latex]\frac{{3}}{{38}}\\[/latex]
76.
- {G1, G2, G3, G4, G5, Y1, Y2, Y3}
- [latex]\frac{{5}}{{8}}[/latex]
- [latex]\frac{{2}}{{3}}[/latex]
- 28
- 68
- No, because P(G AND E) does not equal 0.
78.
The coin toss is independent of the card picked first.
- {(G,H) (G,T) (B,H) (B,T) (R,H) (R,T)}
- P(A) = P(blue)P(head) = ([latex]\frac{{3}}{{10}}\\[/latex])([latex]\frac{{1}}{{2}}\\[/latex])=[latex]\frac{{3}}{{20}}\\[/latex]
- Yes, A and B are mutually exclusive because they cannot happen at the same time; you cannot pick a card that is both blue and also (red or green). P(A AND B) = 0
- No, A and C are not mutually exclusive because they can occur at the same time. In fact, C includes all of the outcomes of A; if the card chosen is blue it is also (red or blue). P(A AND C) = P(A) = 320
80.
- S = {(HHH), (HHT), (HTH), (HTT), (THH), (THT), (TTH), (TTT)}
- [latex]\frac{{4}}{{8}}\\[/latex]
- Yes, because if A has occurred, it is impossible to obtain two tails. In other words, P(A AND B) = 0.
86.
- If Y and Z are independent, then P(Y AND Z) = P(Y)P(Z), so P(Y OR Z) = P(Y) + P(Z) – P(Y)P(Z).
- 0.5
88.
1. iii 2. i 3. iv 4. ii
90.
- P(R) = 0.44
- P(R|E) = 0.56
- P(R|O) = 0.31
- No, whether the money is returned is not independent of which class the money was placed in. There are several ways to justify this mathematically, but one is that the money placed in economics classes is not returned at the same overall rate; P(R|E) ≠ P(R).
- No, this study definitely does not support that notion; in fact, it suggests the opposite. The money placed in the economics classrooms was returned at a higher rate than the money place in all classes collectively; P(R|E) > P(R).
-
P(type O OR Rh-) = P(type O) + P(Rh-) – P(type O AND Rh-)
0.52 = 0.43 + 0.15 – P(type O AND Rh-); solve to find P(type O AND Rh-) = 0.06
6% of people have type O, Rh- blood
-
P(NOT(type O AND Rh-)) = 1 – P(type O AND Rh-) = 1 – 0.06 = 0.94
94% of people do not have type O, Rh- blood
94.
- Let C = be the event that the cookie contains chocolate. Let N = the event that the cookie contains nuts.
- P(C OR N) = P(C) + P(N) – P(C AND N) = 0.36 + 0.12 – 0.08 = 0.40
- P(NEITHER chocolate NOR nuts) = 1 – P(C OR N) = 1 – 0.40 = 0.60
Contingency Tables
97. P(musician is a male AND had private instruction) = [latex]\frac{{15}}{{30}}=\frac{{3}}{{26}}=0.12\\[/latex]
99. P(being a female musician AND learning music in school) =[latex]\frac{{38}}{{130}}=\frac{{19}}{{65}}=0.29\\[/latex]
P(being a female musician)P(learning music in school) =[latex]\left(\frac{72}{130}\right)\left(\frac{62}{130}\right)=\frac{4464}{16,900}=0.26[/latex]
No, they are not independent because P(being a female musician AND learning music in school) is not equal to P(being a female musician)P(learning music in school).
101. [latex]\frac{{35065}}{{100450}}\\[/latex]
102. To pick one person from the study who is Japanese American AND smokes 21 to 30 cigarettes per day means that the person has to meet both criteria: both Japanese American and smokes 21 to 30 cigarettes. The sample space should include everyone in the study. [latex]\frac{{4715}}{{100450}}\\[/latex]
104. To pick one person from the study who is Japanese American given that person smokes 21-30 cigarettes per day, means that the person must fulfill both criteria and the sample space is reduced to those who smoke 21-30 cigarettes per day. The probability is [latex]\frac{{4715}}{{15237}}\\[/latex]
106. 0
108. [latex]\frac{{10}}{{67}}\\[/latex]
110.[latex]\frac{{10}}{{34}}\\[/latex]
112. d
114.
Race and Sex | 1–14 | 15–24 | 25–64 | over 64 | TOTALS |
---|---|---|---|---|---|
white, male | 210 | 3,360 | 13,610 | 4,870 | 22,050 |
white, female | 80 | 580 | 3,380 | 890 | 4,930 |
black, male | 10 | 460 | 1,060 | 140 | 1,670 |
black, female | 0 | 40 | 270 | 20 | 330 |
all others | 100 | ||||
TOTALS | 310 | 4,650 | 18,780 | 6,020 | 29,760 |
115.
Race and Sex | 1–14 | 15–24 | 25–64 | over 64 | TOTALS |
---|---|---|---|---|---|
white, male | 210 | 3,360 | 13,610 | 4,870 | 22,050 |
white, female | 80 | 580 | 3,380 | 890 | 4,930 |
black, male | 10 | 460 | 1,060 | 140 | 1,670 |
black, female | 0 | 40 | 270 | 20 | 330 |
all others | 10 | 210 | 460 | 100 | 780 |
TOTALS | 310 | 4,650 | 18,780 | 6,020 | 29,760 |
116. [latex]\frac{{22050}}{{29760}}\\[/latex]
117.[latex]\frac{{330}}{{29760}}\\[/latex]
118. [latex]\frac{{2000}}{{29760}}\\[/latex]
119. [latex]\frac{{23720}}{{29760}}\\[/latex]
120.[latex]\frac{{5010}}{{6020}}\\[/latex]
122. b
125. [latex]\frac{{26}}{{106}}\\[/latex]
126. [latex]\frac{{33}}{{106}}\\[/latex]
127. [latex]\frac{{21}}{{106}}\\[/latex]
128.[latex]\left(\frac{{26}}{{106}}\right)+\left(\frac{{33}}{{106}}\right)-\left(\frac{{21}}{{106}}\right)=\left(\frac{{38}}{{106}}\right)\\[/latex]
129. [latex]\frac{{21}}{{33}}\\[/latex]
130.
132. a
134.
- P(GG) =[latex]\left(\frac{{5}}{{8}}\right)\left(\frac{{5}}{{8}}\right)=\frac{{25}}{{64}}\\[/latex]
- P(at least one green) = P(GG) + P(GY) + P(YG) = [latex]\left(\frac{{25}}{{64}}\right)+\left(\frac{{15}}{{64}}\right)+\left(\frac{{15}}{{64}}\right)=\frac{{55}}{{64}}\\[/latex]
- P(G|G) = 58
- Yes, they are independent because the first card is placed back in the bag before the second card is drawn; the composition of cards in the bag remains the same from draw one to draw two.
136.
-
<20 20–64 >64 Totals Female 0.0244 0.3954 0.0661 0.486 Male 0.0259 0.4186 0.0695 0.514 Totals 0.0503 0.8140 0.1356 1 - P(F) = 0.486
- P(>64|F) = 0.1361
- P(>64 and F) = P(F) P(>64|F) = (0.486)(0.1361) = 0.0661
- P(>64|F) is the percentage of female drivers who are 65 or older and P(>64 and F) is the percentage of drivers who are female and 65 or older.
- P(>64) = P(>64 and F) + P(>64 and M) = 0.1356
- No, being female and 65 or older are not mutually exclusive because they can occur at the same time P(>64 andF) = 0.0661.
138.
-
Car, Truck or Van Walk Public Transportation Other Totals Alone 0.7318 Not Alone 0.1332 Totals 0.8650 0.0390 0.0530 0.0430 1 - If we assume that all walkers are alone and that none from the other two groups travel alone (which is a big assumption) we have: P(Alone) = 0.7318 + 0.0390 = 0.7708.
- Make the same assumptions as in (b) we have: (0.7708)(1,000) = 771
- (0.1332)(1,000) = 133
140.
Homosexual/Bisexual | IV Drug User* | Heterosexual Contact | Other | Totals | |
---|---|---|---|---|---|
Female | 0 | 70 | 136 | 49 | 255 |
Male | 2,146 | 463 | 60 | 135 | 2,804 |
Totals | 2,146 | 533 | 196 | 184 | 3,059 |
- [latex]\frac{{255}}{{3059}}\\[/latex]
- [latex]\frac{{196}}{{3059}}\\[/latex]
- [latex]\frac{{718}}{{3059}}\\[/latex]
- 0
- [latex]\frac{{463}}{{3059}}\\[/latex]
- [latex]\frac{{136}}{{196}}\\[/latex]
Candela Citations
- Introductory Statistics . Authored by: Barbara Illowski, Susan Dean. Provided by: Open Stax. Located at: http://cnx.org/contents/30189442-6998-4686-ac05-ed152b91b9de@17.44. License: CC BY: Attribution. License Terms: Download for free at http://cnx.org/contents/30189442-6998-4686-ac05-ed152b91b9de@17.44