Mathematical Statistics With Applications, 7th Edition Solution Manual

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Chapter 2: Probability 2.1 A = {FF}, B = {MM}, C = {MF, FM, MM}. Then, AโˆฉB = null set, BโˆฉC = {MM}, C โˆฉ B = {MF, FM}, A โˆช B ={FF,MM}, A โˆช C = S, B โˆช C = C. 2.2 a. AโˆฉB 2.3 2.4 a. b. b. A โˆช B c. A โˆช B d. ( A โˆฉ B ) โˆช ( A โˆฉ B ) Chapter 2: Probability 9 Instructorโ€™s Solutions Manual 2.5 a. ( A โˆฉ B ) โˆช ( A โˆฉ B ) = A โˆฉ ( B โˆช B ) = A โˆฉ S = A . b. B โˆช ( A โˆฉ B ) = ( B โˆฉ A) โˆช ( B โˆฉ B ) = ( B โˆฉ A) = A . c. ( A โˆฉ B ) โˆฉ ( A โˆฉ B ) = A โˆฉ ( B โˆฉ B ) = null set. The result follows from part a. d. B โˆฉ ( A โˆฉ B ) = A โˆฉ ( B โˆฉ B ) = null set. The result follows from part b. 2.6 a. 36 + 6 = 42 2.7 A = {two males} = {M1, M2), (M1,M3), (M2,M3)} B = {at least one female} = {(M1,W1), (M2,W1), (M3,W1), (M1,W2), (M2,W2), (M3,W2), {W1,W2)} A โˆฉ B = null B = {no females} = A Aโˆช B = S Aโˆฉ B = A 2.8 A = {(1,2), (2,2), (3,2), (4,2), (5,2), (6,2), (1,4), (2,4), (3,4), (4,4), (5,4), (6,4), (1,6), (2,6), (3,6), (4,6), (5,6), (6,6)} C = {(2,2), (2,4), (2,6), (4,2), (4,4), (4,6), (6,2), (6,4), (6,6)} AโˆฉB = {(2,2), (4,2), (6,2), (2,4), (4,4), (6,4), (2,6), (4,6), (6,6)} A โˆฉ B = {(1,2), (3,2), (5,2), (1,4), (3,4), (5,4), (1,6), (3,6), (5,6)} A โˆช B = everything but {(1,2), (1,4), (1,6), (3,2), (3,4), (3,6), (5,2), (5,4), (5,6)} A โˆฉC = A 2.9 S = {A+, B+, AB+, O+, A-, B-, AB-, O-} 2.10 a. S = {A, B, AB, O} b. P({A}) = 0.41, P({B}) = 0.10, P({AB}) = 0.04, P({O}) = 0.45. c. P({A} or {B}) = P({A}) + P({B}) = 0.51, since the events are mutually exclusive. 2.11 a. Since P(S) = P(E1) + โ€ฆ + P(E5) = 1, 1 = .15 + .15 + .40 + 3P(E5). So, P(E5) = .10 and P(E4) = .20. b. Obviously, P(E3) + P(E4) + P(E5) = .6. Thus, they are all equal to .2 2.12 a. Let L = {left tern}, R = {right turn}, C = {continues straight}. b. P(vehicle turns) = P(L) + P(R) = 1/3 + 1/3 = 2/3. 2.13 a. Denote the events as VL, SL, U, O. b. Not equally likely: P(VL) = .24, P(SL) = .24, P(U) = .40, P(O) = .12. c. P(at least SL) = P(SL) + P(VL) = .48. 2.14 a. P(needs glasses) = .44 + .14 = .48 b. P(needs glasses but doesnโ€™t use them) = .14 c. P(uses glasses) = .44 + .02 = .46 2.15 a. Since the events are M.E., P(S) = P(E1) + โ€ฆ + P(E4) = 1. So, P(E2) = 1 โ€“ .01 โ€“ .09 โ€“ .81 = .09. b. P(at least one hit) = P(E1) + P(E2) + P(E3) = .19. b. 33 c. 18 Chapter 2: Probability 10 Instructorโ€™s Solutions Manual 2.16 a. 1/3 b. 1/3 + 1/15 = 6/15 c. 1/3 + 1/16 = 19/48 d. 49/240 2.17 Let B = bushing defect, SH = shaft defect. a. P(B) = .06 + .02 = .08 b. P(B or SH) = .06 + .08 + .02 = .16 c. P(exactly one defect) = .06 + .08 = .14 d. P(neither defect) = 1 โ€“ P(B or SH) = 1 – .16 = .84 2.18 a. S = {HH, TH, HT, TT} b. if the coin is fair, all events have probability .25. c. A = {HT, TH}, B = {HT, TH, HH} d. P(A) = .5, P(B) = .75, P( A โˆฉ B ) = P(A) = .5, P( A โˆช B ) = P(B) = .75, P( A โˆช B ) = 1. 2.19 a. (V1, V1), (V1, V2), (V1, V3), (V2, V1), (V2, V2), (V2, V3), (V3, V1), (V3, V2), (V3, V3) b. if equally likely, all have probability of 1/9. A = {same vendor gets both} = {(V1, V1), (V2, V2), (V3, V3)} c. B = {at least one V2} = {(V1, V2), (V2, V1), (V2, V2), (V2, V3), (V3, V2)} So, P(A) = 1/3, P(B) = 5/9, P( A โˆช B ) = 7/9, P( A โˆฉ B ) = 1/9. 2.20 a. P(G) = P(D1) = P(D2) = 1/3. b. i. The probability of selecting the good prize is 1/3. ii. She will get the other dud. iii. She will get the good prize. iv. Her probability of winning is now 2/3. v. The best strategy is to switch. 2.21 P(A) = P( ( A โˆฉ B ) โˆช ( A โˆฉ B ) ) = P ( A โˆฉ B ) + P ( A โˆฉ B ) since these are M.E. by Ex. 2.5. 2.22 P(A) = P( B โˆช ( A โˆฉ B ) ) = P(B) + P ( A โˆฉ B ) since these are M.E. by Ex. 2.5. 2.23 All elements in B are in A, so that when B occurs, A must also occur. However, it is possible for A to occur and B not to occur. 2.24 From the relation in Ex. 2.22, P ( A โˆฉ B ) โ‰ฅ 0, so P(B) โ‰ค P(A). 2.25 Unless exactly 1/2 of all cars in the lot are Volkswagens, the claim is not true. 2.26 a. Let w1 denote the first wine, w2 the second, and w3 the third. Each sample point is an ordered triple indicating the ranking. b. triples: (w1,w2,w3), (w1,w3,w2), (w2,w1,w3), (w2,w3,w1), (w3,w1,w2), (w3,w2,w1) c. For each wine, there are 4 ordered triples where it is not last. So, the probability is 2/3. 2.27 a. S = {CC, CR. CL, RC, RR, RL, LC, LR, LL} b. 5/9 c. 5/9 Chapter 2: Probability 11 Instructorโ€™s Solutions Manual 2.28 a. Denote the four candidates as A1, A2, A3, and M. Since order is not important, the outcomes are {A1A2, A1A3, A1M, A2A3, A2M, A3M}. b. assuming equally likely outcomes, all have probability 1/6. c. P(minority hired) = P(A1M) + P(A2M) + P(A3M) = .5 2.29 a. The experiment consists of randomly selecting two jurors from a group of two women and four men. b. Denoting the women as w1, w2 and the men as m1, m2, m3, m4, the sample space is w1,m1 w2,m1 m1,m2 m2,m3 m3,m4 w1,m2 w2,m2 m1,m3 m2,m4 w1,m3 w2,m3 m1,m4 w1,m4 w2,m4 w1,w2 c. P(w1,w2) = 1/15 2.30 a. Let N1, N2 denote the empty cans and W1, W2 denote the cans filled with water. Thus, S = {N1N2, N1W2, N2W2, N1W1, N2W1, W1W2} b. If this a merely a guess, the events are equally likely. So, P(W1W2) = 1/6. 2.31 a. Define the events: G = family income is greater than $43,318, N otherwise. The points are E1: GGGG E2: GGGN E3: GGNG E4: GNGG E5: NGGG E6: GGNN E7: GNGN E8: NGGN E9: GNNG E10: NGNG E11: NNGG E12: GNNN E13: NGNN E14: NNGN E15: NNNG E16: NNNN b. A = {E1, E2, โ€ฆ, E11} B = {E6, E7, โ€ฆ, E11} C = {E2, E3, E4, E5} c. If P(E) = P(N) = .5, each element in the sample space has probability 1/16. Thus, P(A) = 11/16, P(B) = 6/16, and P(C) = 4/16. 2.32 a. Three patients enter the hospital and randomly choose stations 1, 2, or 3 for service. Then, the sample space S contains the following 27 three-tuples: 111, 112, 113, 121, 122, 123, 131, 132, 133, 211, 212, 213, 221, 222, 223, 231, 232, 233, 311, 312, 313, 321, 322, 323, 331, 332, 333 b. A = {123, 132, 213, 231, 312, 321} c. If the stations are selected at random, each sample point is equally likely. P(A) = 6/27. 2.33 a. There are four โ€œgoodโ€ systems and two โ€œdefactiveโ€ systems. If two out of the six systems are chosen randomly, there are 15 possible unique pairs. Denoting the systems as g1, g2, g3, g4, d1, d2, the sample space is given by S = {g1g2, g1g3, g1g4, g1d1, g1d2, g2g3, g2g4, g2d1, g2d2, g3g4, g3d1, g3d2, g4g1, g4d1, d1d2}. Thus: P(at least one defective) = 9/15 P(both defective) = P(d1d2) = 1/15 b. If four are defective, P(at least one defective) = 14/15. P(both defective) = 6/15. 2.34 a. Let โ€œ1โ€ represent a customer seeking style 1, and โ€œ2โ€ represent a customer seeking style 2. The sample space consists of the following 16 four-tuples: 1111, 1112, 1121, 1211, 2111, 1122, 1212, 2112, 1221, 2121, Chapter 2: Probability 12 Instructorโ€™s Solutions Manual 2211, 2221, 2212, 2122, 1222, 2222 b. If the styles are equally in demand, the ordering should be equally likely. So, the probability is 1/16. c. P(A) = P(1111) + P(2222) = 2/16. 2.35 The total number of flights is 6*7 = 42. 2.36 There are 3! = 6 orderings. 2.37 a. There are 6! = 720 possible itineraries. b. In the 720 orderings, exactly 360 have Denver before San Francisco and 360 have San Francisco before Denver. So, the probability is .5. 2.38 By the mn rule, 4*3*4*5 = 240. 2.39 a. By the mn rule, there are 6*6 = 36 possible roles. b. Define the event A = {(1,6), (2,5), (3,4), (4,3), (5,2), (6,1)}. Then, P(A) = 6/36. 2.40 a. By the mn rule, the dealer must stock 5*4*2 = 40 autos. b. To have each of these in every one of the eight colors, he must stock 8*40 = 320 autos. 2.41 If the first digit cannot be zero, there are 9 possible values. For the remaining six, there are 10 possible values. Thus, the total number is 9*10*10*10*10*10*10 = 9*106. 2.42 There are three different positions to fill using ten engineers. Then, there are P310 = 10!/3! = 720 different ways to fill the positions. 2.43 2.44 2.45 โŽ› 9 โŽžโŽ› 6 โŽžโŽ›1โŽž โŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸ = 504 ways. โŽ 3 โŽ โŽ 5 โŽ โŽ1โŽ  โŽ› 8 โŽžโŽ› 5 โŽž a. The number of ways the taxi needing repair can be sent to airport C is โŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸ = 56. โŽ 5 โŽ โŽ 5 โŽ  So, the probability is 56/504 = 1/9. โŽ› 6 โŽžโŽ› 4 โŽž b. 3โŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸ = 45, so the probability that every airport receives one of the taxis requiring โŽ 2 โŽ โŽ 4 โŽ  repair is 45/504. โŽ› 17 โŽž โŽŸโŽŸ = 408,408. โŽœโŽœ โŽ 2 7 10 โŽ  Chapter 2: Probability 13 Instructorโ€™s Solutions Manual 2.46 2.47 2.48 2.49 2.50 2.51 โŽ›10 โŽž โŽ›8โŽž There are โŽœโŽœ โŽŸโŽŸ ways to chose two teams for the first game, โŽœโŽœ โŽŸโŽŸ for second, etc. So, โŽ2โŽ  โŽ2โŽ  โŽ›10 โŽžโŽ› 8 โŽžโŽ› 6 โŽžโŽ› 4 โŽžโŽ› 2 โŽž 10! there are โŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸ = 5 = 113,400 ways to assign the ten teams to five games. โŽ 2 โŽ โŽ 2 โŽ โŽ 2 โŽ โŽ 2 โŽ โŽ 2 โŽ  2 โŽ› 2n โŽž โŽ› 2n โˆ’ 2 โŽž โŽŸโŽŸ for second, etc. So, There are โŽœโŽœ โŽŸโŽŸ ways to chose two teams for the first game, โŽœโŽœ โŽ2โŽ  โŽ 2 โŽ  2n! following Ex. 2.46, there are n ways to assign 2n teams to n games. 2 โŽ›8โŽž โŽ›8โŽž Same answer: โŽœโŽœ โŽŸโŽŸ = โŽœโŽœ โŽŸโŽŸ = 56. โŽ 5โŽ  โŽ 3โŽ  โŽ›130 โŽž โŽŸโŽŸ = 8385. a. โŽœโŽœ โŽ 2 โŽ  b. There are 26*26 = 676 two-letter codes and 26*26*26 = 17,576 three-letter codes. Thus, 18,252 total major codes. c. 8385 + 130 = 8515 required. d. Yes. Two numbers, 4 and 6, are possible for each of the three digits. So, there are 2*2*2 = 8 potential winning three-digit numbers. โŽ› 50 โŽž There are โŽœโŽœ โŽŸโŽŸ = 19,600 ways to choose the 3 winners. Each of these is equally likely. โŽ3โŽ  โŽ›4โŽž a. There are โŽœโŽœ โŽŸโŽŸ = 4 ways for the organizers to win all of the prizes. The probability is โŽ 3โŽ  4/19600. โŽ› 4 โŽžโŽ› 46 โŽž b. There are โŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸ = 276 ways the organizers can win two prizes and one of the other โŽ 2 โŽ โŽ 1 โŽ  46 people to win the third prize. So, the probability is 276/19600. โŽ› 4 โŽžโŽ› 46 โŽž c. โŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸ = 4140. The probability is 4140/19600. โŽ 1 โŽ โŽ 2 โŽ  โŽ› 46 โŽž d. โŽœโŽœ โŽŸโŽŸ = 15,180. The probability is 15180/19600. โŽ3โŽ  2.52 The mn rule is used. The total number of experiments is 3*3*2 = 18. Chapter 2: Probability 14 Instructorโ€™s Solutions Manual 2.53 a. In choosing three of the five firms, order is important. So P35 = 60 sample points. b. If F3 is awarded a contract, there are P24 = 12 ways the other contracts can be assigned. Since there are 3 possible contracts, there are 3*12 = 36 total number of ways to award F3 a contract. So, the probability is 36/60 = 0.6. 2.54 2.55 2.56 2.57 2.58 2.59 2.60 โŽ›8โŽž โŽ› 3 โŽžโŽ› 5 โŽž There are โŽœโŽœ โŽŸโŽŸ = 70 ways to chose four students from eight. There are โŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸ = 30 ways โŽ4โŽ  โŽ 2 โŽ โŽ 2 โŽ  to chose exactly 2 (of the 3) undergraduates and 2 (of the 5) graduates. If each sample point is equally likely, the probability is 30/70 = 0.7. โŽ› 90 โŽž a. โŽœโŽœ โŽŸโŽŸ โŽ 10 โŽ  โŽ› 20 โŽž โŽ› 70 โŽž b. โŽœโŽœ โŽŸโŽŸ โŽœโŽœ โŽŸโŽŸ โŽ 4 โŽ โŽ 6 โŽ  โŽ› 90 โŽž โŽœโŽœ โŽŸโŽŸ = 0.111 โŽ 10 โŽ  The student can solve all of the problems if the teacher selects 5 of the 6 problems that โŽ› 6 โŽž โŽ›10 โŽž the student can do. The probability is โŽœโŽœ โŽŸโŽŸ โŽœโŽœ โŽŸโŽŸ = 0.0238. โŽ 5โŽ  โŽ 5 โŽ  โŽ› 52 โŽž There are โŽœโŽœ โŽŸโŽŸ = 1326 ways to draw two cards from the deck. The probability is โŽ2โŽ  4*12/1326 = 0.0362. โŽ› 52 โŽž There are โŽœโŽœ โŽŸโŽŸ = 2,598,960 ways to draw five cards from the deck. โŽ5โŽ  โŽ› 4 โŽžโŽ› 4 โŽž a. There are โŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸ = 24 ways to draw three Aces and two Kings. So, the probability is โŽ 3 โŽ โŽ 2 โŽ  24/2598960. b. There are 13*12 = 156 types of โ€œfull houseโ€ hands. From part a. above there are 24 different ways each type of full house hand can be made. So, the probability is 156*24/2598960 = 0.00144. โŽ› 52 โŽž There are โŽœโŽœ โŽŸโŽŸ = 2,598,960 ways to draw five cards from the deck. โŽ5โŽ  โŽ› 4 โŽžโŽ› 4 โŽžโŽ› 4 โŽžโŽ› 4 โŽžโŽ› 4 โŽž a. โŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸ = 45 = 1024. So, the probability is 1024/2598960 = 0.000394. โŽ 1 โŽ โŽ 1 โŽ โŽ 1 โŽ โŽ 1 โŽ โŽ 1 โŽ  b. There are 9 different types of โ€œstraightโ€ hands. So, the probability is 9*45/2598960 = 0.00355. Note that this also includes โ€œstraight flushโ€ and โ€œroyal straight flushโ€ hands. a. 365(364)(363) (365 โˆ’ n + 1) 365n b. With n = 23, 1 โˆ’ 365(364) (343) = 0.507. 36523 Chapter 2: Probability 15 Instructorโ€™s Solutions Manual 2.61 2.62 2.63 364(364)(364) a. 365 n (364) 364 n โŽ› 364 โŽž = . b. With n = 253, 1 โˆ’ โŽœ โŽŸ n 365 โŽ 365 โŽ  253 = 0.5005. โŽ› 9! โŽž โŽŸโŽŸ = 1680. If The number of ways to divide the 9 motors into 3 groups of size 3 is โŽœโŽœ โŽ 3! 3! 3! โŽ  both motors from a particular supplier are assigned to the first line, there are only 7 โŽ› 7! โŽž โŽŸโŽŸ motors to be assigned: one to line 1 and three to lines 2 and 3. This can be done โŽœโŽœ โŽ 1! 3! 3! โŽ  = 140 ways. Thus, 140/1680 = 0.0833. โŽ›8โŽž There are โŽœโŽœ โŽŸโŽŸ = 56 sample points in the experiment, and only one of which results in โŽ 5โŽ  choosing five women. So, the probability is 1/56. 6 2.64 โŽ›1โŽž 6!โŽœ โŽŸ = 5/324. โŽ6โŽ  2.65 โŽ›2โŽž โŽ›1โŽž 5!โŽœ โŽŸ โŽœ โŽŸ = 5/162. โŽ6โŽ  โŽ6โŽ  6 4 2.66 a. After assigning an ethnic group member to each type of job, there are 16 laborers remaining for the other jobs. Let na be the number of ways that one ethnic group can be assigned to each type of job. Then: โŽ› 4 โŽžโŽ› 16 โŽž โŽŸโŽŸ . The probability is na/N = 0.1238. โŽŸโŽŸโŽœโŽœ na = โŽœโŽœ โŽ1 1 1 1โŽ โŽ 5 3 4 4 โŽ  b. It doesnโ€™t matter how the ethnic group members are assigned to jobs type 1, 2, and 3. Let na be the number of ways that no ethnic member gets assigned to a type 4 job. Then: โŽ› 4 โŽžโŽ›16 โŽž โŽ› 4 โŽž โŽ›16 โŽž โŽ› 20 โŽž na = โŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸ . The probability is โŽœโŽœ โŽŸโŽŸ โŽœโŽœ โŽŸโŽŸ โŽœโŽœ โŽŸโŽŸ = 0.2817. โŽ 0 โŽ โŽ 5 โŽ  โŽ0โŽ โŽ 5 โŽ  โŽ 5 โŽ  2.67 As shown in Example 2.13, N = 107. a. Let A be the event that all orders go to different vendors. Then, A contains na = 10*9*โ€ฆ*4 = 604,800 sample points. Thus, P(A) = 604,800/107 = 0.0605. โŽ›7โŽž b. The 2 orders assigned to Distributor I can be chosen from the 7 in โŽœโŽœ โŽŸโŽŸ = 21 ways. โŽ2โŽ  โŽ› 5โŽž The 3 orders assigned to Distributor II can be chosen from the remaining 5 in โŽœโŽœ โŽŸโŽŸ = โŽ 3โŽ  10 ways. The final 2 orders can be assigned to the remaining 8 distributors in 82 ways. Thus, there are 21*10*82 = 13,440 possibilities so the probability is 13440/107 = 0.001344. Chapter 2: Probability 16 Instructorโ€™s Solutions Manual c. Let A be the event that Distributors I, II, and III get exactly 2, 3, and 1 order(s) respectively. Then, there is one remaining unassigned order. Thus, A contains โŽ› 7 โŽžโŽ› 5 โŽžโŽ› 2 โŽž โŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸ7 = 2940 sample points and P(A) = 2940/107 = 0.00029. โŽ 2 โŽ โŽ 3 โŽ โŽ 1 โŽ  2.68 โŽ›nโŽž n! a. โŽœโŽœ โŽŸโŽŸ = = 1. There is only one way to choose all of the items. โŽ n โŽ  n!( n โˆ’ n )! โŽ›nโŽž n! b. โŽœโŽœ โŽŸโŽŸ = = 1. There is only one way to chose none of the items. โŽ 0 โŽ  0!( n โˆ’ 0)! โŽ›nโŽž โŽ› n โŽž n! n! โŽŸโŽŸ . There are the same number of c. โŽœโŽœ โŽŸโŽŸ = = = โŽœโŽœ โŽ r โŽ  r!( n โˆ’ r )! ( n โˆ’ r )!( n โˆ’ ( n โˆ’ r ))! โŽ n โˆ’ r โŽ  ways to choose r out of n objects as there are to choose n โ€“ r out of n objects. n n โŽ›nโŽž โŽ›nโŽž d. 2 n = (1 + 1) n = โˆ‘ โŽœโŽœ โŽŸโŽŸ1n โˆ’i1i = โˆ‘ โŽœโŽœ โŽŸโŽŸ . i =1 โŽ i โŽ  i =1 โŽ i โŽ  2.69 โŽ›nโŽž โŽ› n โŽž n! n! n!( n โˆ’ k + 1) n!k ( n + 1)! โŽŸโŽŸ = โŽœโŽœ โŽŸโŽŸ + โŽœโŽœ + = + = โŽ k โŽ  โŽ k โˆ’ 1โŽ  k!( n โˆ’ k )! ( k โˆ’ 1)!( n โˆ’ k + 1)! k!( n โˆ’ k + 1)! k!( n โˆ’ k + 1)! k!( n + 1 โˆ’ k )! 2.70 From Theorem 2.3, let y1 = y2 = โ€ฆ = yk = 1. 2.71 a. P(A|B) = .1/.3 = 1/3. c. P(A| A โˆช B ) = .5/(.5+.3-.1) = 5/7 e. P(AโˆฉB| A โˆช B ) = .1(.5+.3-.1) = 1/7. 2.72 Note that P(A) = 0.6 and P(A|M) = .24/.4 = 0.6. So, A and M are independent. Similarly, P( A | F ) = .24/.6 = 0.4 = P( A ), so A and F are independent. 2.73 a. P(at least one R) = P(Red) 3/4. c. P(one r | Red) = .5/.75 = 2/3. 2.74 a. P(A) = 0.61, P(D) = .30. P(AโˆฉD) = .20. Dependent. b. P(B) = 0.30, P(D) = .30. P(BโˆฉD) = 0.09. Independent. c. P(C) = 0.09, P(D) = .30. P(CโˆฉD) = 0.01. Dependent. b. P(B|A) = .1/.5 = 1/5. d. P(A|AโˆฉB) = 1, since A has occurred. b. P(at least one r) = 3/4. Chapter 2: Probability 17 Instructorโ€™s Solutions Manual 2.75 a. Given the first two cards drawn are spades, there are 11 spades left in the deck. Thus, โŽ›11โŽž โŽœโŽœ โŽŸโŽŸ 3 the probability is โŽ โŽ  = 0.0084. Note: this is also equal to P(S3S4S5|S1S2). โŽ› 50 โŽž โŽœโŽœ โŽŸโŽŸ โŽ3โŽ  b. Given the first three cards drawn are spades, there are 10 spades left in the deck. Thus, โŽ›10 โŽž โŽœโŽœ โŽŸโŽŸ 2 the probability is โŽ โŽ  = 0.0383. Note: this is also equal to P(S4S5|S1S2S3). โŽ› 49 โŽž โŽœโŽœ โŽŸโŽŸ โŽ2โŽ  c. Given the first four cards drawn are spades, there are 9 spades left in the deck. Thus, โŽ›9โŽž โŽœโŽœ โŽŸโŽŸ 1 the probability is โŽ โŽ  = 0.1875. Note: this is also equal to P(S5|S1S2S3S4) โŽ› 48 โŽž โŽœโŽœ โŽŸโŽŸ โŽ1โŽ  2.76 Define the events: U: job is unsatisfactory A: plumber A does the job a. P(U|A) = P(AโˆฉU)/P(A) = P(A|U)P(U)/P(A) = .5*.1/.4 = 0.125 b. From part a. above, 1 โ€“ P(U|A) = 0.875. 2.77 a. 0.40 e. 1 โ€“ 0.4 = 0.6 h. .1/.37 = 0.27 2.78 1. Assume P(A|B) = P(A). Then: P(AโˆฉB) = P(A|B)P(B) = P(A)P(B). P(B|A) = P(BโˆฉA)/P(A) = P(A)P(B)/P(A) = P(B). 2. Assume P(B|A) = P(B). Then: P(AโˆฉB) = P(B|A)P(A) = P(B)P(A). P(A|B) = P(AโˆฉB)/P(B) = P(A)P(B)/P(B) = P(A). 3. Assume P(AโˆฉB) = P(B)P(A). The results follow from above. 2.79 2.80 Given P(A)

0. So they are not independent 2.82 P(B|A) = P(BโˆฉA)/P(A) = P(A)/P(A) = 1 P(A|B) = P(AโˆฉB)/P(B) = P(A)/P(B). b. 0.37 f. 1 โ€“ 0.67 = 0.33 i. 1/.4 = 0.25 c. 0.10 d. 0.40 + 0.37 โ€“ 0.10 = 0.67 g. 1 โ€“ 0.10 = 0.90 Chapter 2: Probability 18 Instructorโ€™s Solutions Manual P( A) , since A and B are M.E. events. P( A) + P( B ) 2.83 P(A | A โˆช B ) = P(A)/P( A โˆช B ) = 2.84 Note that if P( A2 โˆฉ A3 ) = 0, then P( A1 โˆฉ A2 โˆฉ A3 ) also equals 0. The result follows from Theorem 2.6. 2.85 P( A | B ) = P( A โˆฉ B )/P( B ) = P( B | A) P( A) [1 โˆ’ P( B | A)]P( A) [1 โˆ’ P( B )]P( A) = = = P( B ) P( B ) P( B ) P( B ) P( A) = P( A). So, A and B are independent. P( B ) P( A | B ) P( B ) [1 โˆ’ P( A | B )]P( B ) = . From the above, P( B | A ) = P( B โˆฉ A ) /P( A ) = P( A ) P( A ) [1 โˆ’ P( A)]P( B ) = P( A ) P( B ) = P( B ). So, A and B are independent. So P( B | A ) = P( A ) P( A ) A and B are independent 2.86 a. No. It follows from P( A โˆช B ) = P(A) + P(B) โ€“ P(AโˆฉB) โ‰ค 1. b. P(AโˆฉB) โ‰ฅ 0.5 c. No. d. P(AโˆฉB) โ‰ค 0.70. 2.87 a. P(A) + P(B) โ€“ 1. b. the smaller of P(A) and P(B). 2.88 a. Yes. b. 0, since they could be disjoint. c. No, since P(AโˆฉB) cannot be larger than either of P(A) or P(B). d. 0.3 = P(A). 2.89 a. 0, since they could be disjoint. b. the smaller of P(A) and P(B). 2.90 a. (1/50)*(1/50) = 0.0004. b. P(at least one injury) = 1 โ€“ P(no injuries in 50 jumps) = 1 = (49/50)50 = 0.636. Your friend is not correct. 2.91 If A and B are M.E., P( A โˆช B ) = P(A) + P(B). This value is greater than 1 if P(A) = 0.4 and P(B) = 0.7. So they cannot be M.E. It is possible if P(A) = 0.4 and P(B) = 0.3. 2.92 a. The three tests are independent. So, the probability in question is (.05)3 = 0.000125. b. P(at least one mistake) = 1 โ€“ P(no mistakes) = 1 โ€“ (.95)3 = 0.143. 2.93 Part a is found using the Addition Rule. Parts b and c use DeMorganโ€™s Laws. a. 0.2 + 0.3 โ€“ 0.4 = 0.1 Chapter 2: Probability 19 Instructorโ€™s Solutions Manual b. 1 โ€“ 0.1 = 0.9 c. 1 โ€“ 0.4 = 0.6 P ( A โˆฉ B ) P ( B ) โˆ’ P ( A โˆฉ B ) .3 โˆ’ .1 d. P( A | B ) = = = = 2/3. P( B ) P( B ) .3 2.94 Define the events A: device A detects smoke B: device B detects smoke a. P( A โˆช B ) = .95 + .90 – .88 = 0.97. b. P(smoke is undetected) = 1 – P( A โˆช B ) = 1 โ€“ 0.97 = 0.03. 2.95 Let H denote a hit and let M denote a miss. Then, she wins the game in three trials with the events HHH, HHM, and MHH. If she begins with her right hand, the probability she wins the game, assuming independence, is (.7)(.4)(.7) + (.7)(.4)(.3) + (.3)(.4)(.7) = 0.364. 2.96 Using the results of Ex. 2.95: a. 0.5 + 0.2 โ€“ (0.5)(0.2) = 0.6. b. 1 โ€“ 0.6 = 0.4. c. 1 โ€“ 0.1 = 0.9. 2.97 a. P(current flows) = 1 โ€“ P(all three relays are open) = 1 โ€“ (.1)3 = 0.999. b. Let A be the event that current flows and B be the event that relay 1 closed properly. Then, P(B|A) = P(BโˆฉA)/P(A) = P(B)/P(A) = .9/.999 = 0.9009. Note that B โŠ‚ A . 2.98 Series system: P(both relays are closed) = (.9)(.9) = 0.81 Parallel system: P(at least one relay is closed) = .9 + .9 โ€“ .81 = 0.99. 2.99 Given that P( A โˆช B ) = a, P(B) = b, and that A and B are independent. Thus P( A โˆช B ) = 1 โ€“ a and P(BโˆฉA) = bP(A). Thus, P( A โˆช B ) = P(A) + b – bP(A) = 1 โ€“ a. Solve for P(A). 2.100 P( A โˆช B | C ) = P(( A โˆช B ) โˆฉ C ) P(( A โˆฉ C ) โˆช ( B โˆฉ C )) = = P (C ) P (C ) P( A โˆฉ C ) + P( B โˆฉ C ) โˆ’ P( A โˆฉ B โˆฉ C ) = P(A|C) + P(B|C) + P(AโˆฉB|C). P (C ) 2.101 Let A be the event the item gets past the first inspector and B the event it gets past the second inspector. Then, P(A) = 0.1 and P(B|A) = 0.5. Then P(AโˆฉB) = .1(.5) = 0.05. 2.102 Define the events: I: disease I us contracted P(I) = 0.1, P(II) = 0.15, and P(IโˆฉII) = 0.03. a. P(I โˆช II) = .1 + .15 โ€“ .03 = 0.22 b. P(IโˆฉII|I โˆช II) = .03/.22 = 3/22. II: disease II is contracted. Then, 2.103 Assume that the two state lotteries are independent. a. P(666 in CT|666 in PA) = P(666 in CT) = 0.001 b. P(666 in CTโˆฉ666 in PA) = P(666 in CT)P(666 in PA) = .001(1/8) = 0.000125. Chapter 2: Probability 20 Instructorโ€™s Solutions Manual 2.104 By DeMorganโ€™s Law, P( A โˆฉ B ) = 1 โˆ’ P( A โˆฉ B ) = 1 โˆ’ P( A โˆช B ) . Since P( A โˆช B ) โ‰ค P( A ) + P( B ) , P( A โˆฉ B ) โ‰ฅ 1 โ€“ P( A ) โˆ’ P( B ). 2.105 P(landing safely on both jumps) โ‰ฅ โ€“ 0.05 โ€“ 0.05 = 0.90. 2.106 Note that it must be also true that P( A ) = P( B ) . Using the result in Ex. 2.104, P( A โˆฉ B ) โ‰ฅ 1 โ€“ 2 P( A ) โ‰ฅ 0.98, so P(A) โ‰ฅ 0.99. 2.107 (Answers vary) Consider flipping a coin twice. Define the events: A: observe at least one tail B: observe two heads or two tails C: observe two heads 2.108 Let U and V be two events. Then, by Ex. 2.104, P(U โˆฉ V ) โ‰ฅ 1 โ€“ P(U ) โˆ’ P(V ). Let U = AโˆฉB and V = C. Then, P( A โˆฉ B โˆฉ C ) โ‰ฅ 1 โ€“ P( A โˆฉ B ) โˆ’ P(C ) . Apply Ex. 2.104 to P( A โˆฉ B ) to obtain the result. 2.109 This is similar to Ex. 2.106. Apply Ex. 2.108: 0.95 โ‰ค 1 โ€“ P( A ) โˆ’ P( B ) โˆ’ P(C ) โ‰ค P( A โˆฉ B โˆฉ C ) . Since the events have the same probability, 0.95 โ‰ค 1 โˆ’ 3P( A ) . Thus, P(A) โ‰ฅ 0.9833. 2.110 Define the events: I: item is from line I II: item is from line II N: item is not defective Then, P(N) = P( N โˆฉ ( I โˆช II )) = P(NโˆฉI) + P(NโˆฉII) = .92(.4) + .90(.6) = 0.908. 2.111 Define the following events: A: buyer sees the magazine ad B: buyer sees the TV ad C: buyer purchases the product The following are known: P(A) = .02, P(B) = .20, P(AโˆฉB) = .01. Thus P( A โˆฉ B ) = .21. Also, P(buyer sees no ad) = P( A โˆฉ B ) = 1 โˆ’ P( A โˆช B ) = 1 โ€“ 0.21 = 0.79. Finally, it is known that P(C | A โˆช B ) = 0.1 and P(C | A โˆฉ B ) = 1/3. So, we can find P(C) as P(C) = P(C โˆฉ ( A โˆช B )) + P(C โˆฉ ( A โˆฉ B )) = (1/3)(.21) + (.1)(.79) = 0.149. 2.112 a. P(aircraft undetected) = P(all three fail to detect) = (.02)(.02)(.02) = (.02)3. b. P(all three detect aircraft) = (.98)3. 2.113 By independence, (.98)(.98)(.98)(.02) = (.98)3(.02). 2.114 Let T = {detects truth} and L = {detects lie}. The sample space is TT, TL, LT, LL. Since one suspect is guilty, assume the guilty suspect is questioned first: a. P(LL) = .95(.10) = 0.095 b. P(LT) = ..95(.9) = 0.885 Chapter 2: Probability 21 Instructorโ€™s Solutions Manual b. P(TL) = .05(.10) = 0.005 d. 1 โ€“ (.05)(.90) = 0.955 2.115 a. From the description of the problem, there is a 50% chance a car will be rejected. To find the probability that three out of four will be rejected (i.e. the drivers chose team 2), โŽ›4โŽž note that there are โŽœโŽœ โŽŸโŽŸ = 4 ways that three of the four cars are evaluated by team 2. Each โŽ 3โŽ  one has probability (.5)(.5)(.5)(.5) of occurring, so the probability is 4(.5)4 = 0.25. b. The probability that all four pass (i.e. all four are evaluated by team 1) is (.5)4 = 1/16. 2.116 By the complement rule, P(system works) = 1 โ€“ P(system fails) = 1 โ€“ (.01)3. 2.117 By independence, (.75)(.75)(.75)(.75) = (.75)4. 2.118 If the victim is to be saved, a proper donor must be found within eight minutes. The patient will be saved if the proper donor is found on the 1st, 2nd, 3rd, or 4th try. But, if the donor is found on the 2nd try, that implies he/she wasnโ€™t found on the 1st try. So, the probability of saving the patient is found by, letting A = {correct donor is found}: P(save) = P(A) + P( A A) + P( A A A) + P( A A A A) . By independence, this is .4 + .6(.4) + (.6)2(.4) + (.6)3(.4) = 0.8704 2.119 a. Define the events: A: obtain a sum of 3 B: do not obtain a sum of 3 or 7 Since there are 36 possible rolls, P(A) = 2/36 and P(B) = 28/36. Obtaining a sum of 3 before a sum of 7 can happen on the 1st roll, the 2nd roll, the 3rd roll, etc. Using the events above, we can write these as A, BA, BBA, BBBA, etc. The probability of obtaining a sum of 3 before a sum of 7 is given by P(A) + P(B)P(A) + [P(B)]2P(A) + [P(B)]3P(A) + โ€ฆ . (Here, we are using the fact that the rolls are independent.) This is an infinite sum, and it follows as a geometric series. Thus, 2/36 + (28/36)(2/36) + (28/36)2(2/26) + โ€ฆ = 1/4. b. Similar to part a. Define C: obtain a sum of 4 D: do not obtain a sum of 4 or 7 Then, P(C) = 3/36 and P(D) = 27/36. The probability of obtaining a 4 before a 7 is 1/3. 2.120 Denote the events G: good refrigerator D: defective refrigerator a. If the last defective refrigerator is found on the 4th test, this means the first defective refrigerator was found on the 1st, 2nd, or 3rd test. So, the possibilities are DGGD, GDGD, and GGDD. So, the probability is ( 62 )( 45 )( 43 ) 13 . The probabilities associated with the other two events are identical to the first. So, the desired probability is 3 ( 62 )( 45 )( 43 ) 13 = 15 . b. Here, the second defective refrigerator must be found on the 2nd, 3rd, or 4th test. Define: A1: second defective found on 2nd test A2: second defective found on 3rd test A3: second defective found on 4th test Clearly, P(A1) = ( 62 )( 15 ) = 151 . Also, P(A3) = 15 from part a. Note that A2 = {DGD, GDD}. Thus, P(A2) = 2 ( 62 )( 45 )( 14 ) = 152 . So, P(A1) + P(A2) + P(A3) = 2/5. c. Define: B1: second defective found on 3rd test Chapter 2: Probability 22 Instructorโ€™s Solutions Manual B2: second defective found on 4th test Clearly, P(B1) = 1/4 and P(B2) = (3/4)(1/3) = 1/4. So, P(B1) + P(B2) = 1/2. 2.121 a. 1/n b. nnโˆ’1 โ‹… n1โˆ’1 = 1/n. nnโˆ’1 โ‹… nnโˆ’โˆ’12 โ‹… nโˆ’1 2 = 1/n. c. P(gain access) = P(first try) + P(second try) + P(third try) = 3/7. 2.122 Applet exercise (answers vary). 2.123 Applet exercise (answers vary). 2.124 Define the events for the voter: D: democrat R: republican P( F | D ) P( D ) .7(.6) P( D | F ) = = = 7/9 P( F | D ) P( D ) + P( F | R ) P( R ) .7(.6) + .3(.4) F: favors issue 2.125 Define the events for the person: D: has the disease H: test indicates the disease Thus, P(H|D) = .9, P( H | D ) = .9, P(D) = .01, and P( D ) = .99. Thus, P( H | D ) P( D ) P( D | H ) = = 1/12. P( H | D ) P( D ) + P( H | D ) P( D ) 2.126 a. (.95*.01)/(.95*.01 + .1*.99) = 0.08756. b. .99*.01/(.99*.01 + .1*.99) = 1/11. c. Only a small percentage of the population has the disease. d. If the specificity is .99, the positive predictive value is .5. e. The sensitivity and specificity should be as close to 1 as possible. 2.127 a. .9*.4/(.9*.4 + .1*.6) = 0.857. b. A larger proportion of the population has the disease, so the numerator and denominator values are closer. c. No; if the sensitivity is 1, the largest value for the positive predictive value is .8696. d. Yes, by increasing the specificity. e. The specificity is more important with tests used for rare diseases. 2.128 For i = 1, 2, 3, let Fi represent the event that the plane is found in region i and Ni be the complement. Also Ri is the event the plane is in region i. Then P(Fi|Ri) = 1 โ€“ ฮฑi and P(Ri) = 1/3 for all i. Then, ฮฑ 1 13 P( N 1 | R1 ) P( R1 ) a. P( R1 | N 1 ) = = P( N 1 | R1 ) P( R1 ) + P( N 1 | R2 ) P( R2 ) + P( N 1 | R3 ) P( R3 ) ฮฑ 1 13 + 13 + 13 = ฮฑ1 ฮฑ1 + 2 . b. Similarly, P( R2 | N 1 ) = 1 and ฮฑ1 + 2 c. P( R3 | N 1 ) = 1 . ฮฑ1 + 2 Chapter 2: Probability 23 Instructorโ€™s Solutions Manual 2.129 Define the events: P: positive response M: male respondent F: female respondent P(P|F) = .7, P(P|M) = .4, P(M) = .25. Using Bayesโ€™ rule, P( P | M ) P( M ) .6(.25) P( M | P ) = = 0.4. = P( P | M ) P( M ) + P( P | F ) P( F ) .6(.25) + .3(.75) 2.130 Define the events: C: contract lung cancer S: worked in a shipyard Thus, P(S|C) = .22, P( S | C ) = .14, and P(C) = .0004. Using Bayesโ€™ rule, P( S | C ) P(C ) .22(.0004) P(C | S ) = = 0.0006. = P( S | C ) P(C ) + P( S | C ) P(C ) .22(.0004) + .14(.9996) 2.131 The additive law of probability gives that P( Aฮ”B ) = P( A โˆฉ B ) + P( A โˆฉ B ) . Also, A and B can be written as the union of two disjoint sets: A = ( A โˆฉ B ) โˆช ( A โˆฉ B ) and B = ( A โˆฉ B ) โˆช ( A โˆฉ B ) . Thus, P( A โˆฉ B ) = P( A) โˆ’ P( A โˆฉ B ) and P( A โˆฉ B ) = P( B ) โˆ’ P( A โˆฉ B ) . Thus, P( Aฮ”B ) = P( A) + P( B ) โˆ’ 2 P( A โˆฉ B ) . 2.132 a. Let P( A | B ) = P( A | B ) = p. By the Law of Total Probability, P( A) = P( A | B ) P( B ) + P( A | B ) P( B ) = p (P( B ) + P( B ) ) = p. Thus, A and B are independent. b. P( A) = P( A | C ) P(C ) + P( A | C ) P(C ) > P( B | C ) P(C ) + P( B | C ) P(C ) = P( B ) . 2.133 Define the events: G: student guesses C: student is correct P(C | G ) P(G ) 1(.8) = P(G | C ) = = 0.9412. P(C | G ) P(G ) + P(C | G ) P(G ) 1(.8) + .25(.2) 2.134 Define F as โ€œfailure to learn. Then, P(F|A) = .2, P(F|B) = .1, P(A) = .7, P(B) = .3. By Bayesโ€™ rule, P(A|F) = 14/17. 2.135 Let M = major airline, P = private airline, C = commercial airline, B = travel for business a. P(B) = P(B|M)P(M) + P(B|P)P(P) + P(B|C)P(C) = .6(.5) + .3(.6) + .1(.9) = 0.57. b. P(BโˆฉP) = P(B|P)P(P) = .3(.6) = 0.18. c. P(P|B) = P(BโˆฉP)/P(B) = .18/.57 = 0.3158. d. P(B|C) = 0.90. 2.136 Let A = womanโ€™s name is selected from list 1, B = womanโ€™s name is selected from list 2. Thus, P(A) = 5/7, P( B | A) = 2/3, P( B | A ) = 7/9. 2 5 () 30 P( B | A) P( A) . = 2 53 77 2 = P( A | B ) = P( B | A) P( A) + P( B | A ) P( A ) 3 ( 7 ) + 9 ( 7 ) 44 2.137 Let A = {both balls are white}, and for i = 1, 2, โ€ฆ 5 Ai = both balls selected from bowl i are white. Then โˆช Ai = A. Bi = bowl i is selected. Then, P( Bi ) = .2 for all i. Chapter 2: Probability 24 Instructorโ€™s Solutions Manual a. P(A) = โˆ‘ P( Ai | Bi ) P( B i ) = 15 [0 + 25 ( 14 ) + 53 ( 24 ) + 45 ( 43 ) + 1] = 2/5. 3 b. Using Bayesโ€™ rule, P(B3|A) = 502 = 3/20. 50 2.138 Define the events: A: the player wins Bi: a sum of i on first toss Ck: obtain a sum of k before obtaining a 7 12 Now, P( A) = โˆ‘ P( A โˆฉ Bi ) . We have that P( A โˆฉ B2 ) = P( A โˆฉ B3 ) = P( A โˆฉ B12 ) = 0. i =1 Also, P( A โˆฉ B7 ) = P( B7 ) = 366 , P( A โˆฉ B11 ) = P( B11 ) = 362 . Now, P( A โˆฉ B4 ) = P(C 4 โˆฉ B7 ) = P(C4 ) P( B7 ) = 13 ( 363 ) = 363 (using independence Ex. 119). Similarly, P(C5) = P(C9) = 104 , P(C6) = P(C8) = 115 , and P(C10) = 93 . 25 , P( A โˆฉ B10 ) = 361 . Thus, P( A โˆฉ B5 ) = P( A โˆฉ B9 ) = 452 , P( A โˆฉ B6 ) = P( A โˆฉ B8 ) = 396 Putting all of this together, P(A) = 0.493. 2.139 From Ex. 1.112, P(Y = 0) = (.02)3 and P(Y = 3) = (.98)3. The event Y = 1 are the events FDF, DFF, and FFD, each having probability (.02)2(.98). So, P(Y = 1) = 3(.02)2(.98). Similarly, P(Y = 2) = 3(.02)2(.98). โŽ›6โŽž 2.140 The total number of ways to select 3 from 6 refrigerators is โŽœโŽœ โŽŸโŽŸ = 20. The total number โŽ 3โŽ  โŽ› 2 โŽžโŽ› 4 โŽž โŽŸโŽŸ , y = 0, 1, 2. So, of ways to select y defectives and 3 โ€“ y nondefectives is โŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽ y โŽ โŽ 3 โˆ’ y โŽ  โŽ› 2 โŽžโŽ› 4 โŽž โŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸ 0 3 P(Y = 0) = โŽ โŽ โŽ โŽ  = 4/20, P(Y = 1) = 4/20, and P(Y = 2) = 12/20. 20 2.141 The events Y = 2, Y = 3, and Y = 4 were found in Ex. 2.120 to have probabilities 1/15, 2/15, and 3/15 (respectively). The event Y = 5 can occur in four ways: DGGGD GDGGD GGDGD GGGDD Each of these possibilities has probability 1/15, so that P(Y = 5) = 4/15. By the complement rule, P(Y = 6) = 5/15. 2.142 Each position has probability 1/4, so every ordering of two positions (from two spins) has โŽ›4โŽž 1 probability 1/16. The values for Y are 2, 3. P(Y = 2) = โŽœโŽœ โŽŸโŽŸ = 3/4. So, P(Y = 3) = 1/4. โŽ 2 โŽ  16 Chapter 2: Probability 25 Instructorโ€™s Solutions Manual 2.143 Since P( B ) = P( B โˆฉ A) + P( B โˆฉ A ) , 1 = P( B โˆฉ A) P( B โˆฉ A ) + = P( A | B ) + P( A | B ) . P( B ) P( B ) 2.144 a. S = {16 possibilities of drawing 0 to 4 of the sample points} โŽ›4โŽž โŽ›4โŽž โŽ›4โŽž โŽ›4โŽž โŽ›4โŽž b. โŽœโŽœ โŽŸโŽŸ + โŽœโŽœ โŽŸโŽŸ + โŽœโŽœ โŽŸโŽŸ + โŽœโŽœ โŽŸโŽŸ + โŽœโŽœ โŽŸโŽŸ = 1 + 4 + 6 + 4 + 1 = 16 = 2 4. โŽ 0 โŽ  โŽ 1 โŽ  โŽ 2โŽ  โŽ 3โŽ  โŽ 4โŽ  c. A โˆช B = {E1, E2, E3, E4}, A โˆฉ B = {E2}, A โˆฉ B = 0/ , A โˆช B = {E2, E4}. 2.145 All 18 orderings are possible, so the total number of orderings is 18! โŽ› 52 โŽž โŽ›13 โŽž 2.146 There are โŽœโŽœ โŽŸโŽŸ ways to draw 5 cards from the deck. For each suit, there are โŽœโŽœ โŽŸโŽŸ ways โŽ5โŽ  โŽ5โŽ  โŽ›13โŽž โŽ› 52 โŽž to select 5 cards. Since there are 4 suits, the probability is 4โŽœโŽœ โŽŸโŽŸ โŽœโŽœ โŽŸโŽŸ = 0.00248. โŽ5โŽ  โŽ 5โŽ  2.147 The gambler will have a full house if he is dealt {two kings} or {an ace and a king} (there are 47 cards remaining in the deck, two of which are aces and three are kings). โŽ› 3 โŽž โŽ› 47 โŽž โŽ› 3 โŽžโŽ› 2 โŽž โŽ› 47 โŽž The probabilities of these two events are โŽœโŽœ โŽŸโŽŸ โŽœโŽœ โŽŸโŽŸ and โŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸ โŽœโŽœ โŽŸโŽŸ , respectively. โŽ2โŽ  โŽ 2 โŽ  โŽ 1 โŽ โŽ 1 โŽ  โŽ 2 โŽ  โŽ› 3โŽž So, the probability of a full house is โŽœโŽœ โŽŸโŽŸ โŽ2โŽ  โŽ› 47 โŽž โŽ› 3 โŽžโŽ› 2 โŽž โŽœโŽœ โŽŸโŽŸ + โŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸ โŽ 2 โŽ  โŽ 1 โŽ โŽ 1 โŽ  โŽ› 47 โŽž โŽœโŽœ โŽŸโŽŸ = 0.0083. โŽ2โŽ  โŽ›12 โŽž 2.148 Note that โŽœโŽœ โŽŸโŽŸ = 495 . P(each supplier has at least one component tested) is given by โŽ4โŽ  โŽ› 3 โŽžโŽ› 4 โŽžโŽ› 5 โŽž โŽ› 3 โŽžโŽ› 4 โŽžโŽ› 5 โŽž โŽ› 3 โŽžโŽ› 4 โŽžโŽ› 5 โŽž โŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸ + โŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸ + โŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸโŽœโŽœ โŽŸโŽŸ โŽ 2 โŽ โŽ 1 โŽ โŽ 1 โŽ  โŽ 1 โŽ โŽ 2 โŽ โŽ 1 โŽ  โŽ 1 โŽ โŽ 1 โŽ โŽ 2 โŽ  = 270/475 = 0.545. 495 2.149 Let A be the event that the person has symptom A and define B similarly. Then a. P( A โˆช B ) = P( A โˆฉ B ) = 0.4 b. P( A โˆช B ) = 1 โ€“ P( A โˆช B ) = 0.6. c. P( A โˆฉ B | B ) = P( A โˆฉ B ) / P( B ) = .1/.4 = 0.25 2.150 P(Y = 0) = 0.4, P(Y = 1) = 0.2 + 0.3 = 0.5, P(Y = 2) = 0.1. 2.151 The probability that team A wins in 5 games is p4(1 โ€“ p) and the probability that team B wins in 5 games is p(1 โ€“ p)4. Since there are 4 ways that each team can win in 5 games, the probability is 4[p4(1 โ€“ p) + p(1 โ€“ p)4]. Chapter 2: Probability 26 Instructorโ€™s Solutions Manual 2.152 Let R denote the event that the specimen turns red and N denote the event that the specimen contains nitrates. a. P( R ) = P( R | N ) P( N ) + P( R | N ) P( N ) = .95(.3) + .1(.7) = 0.355. b. Using Bayesโ€™ rule, P(N|R) = .95(.3)/.355 = 0.803. 2.153 Using Bayesโ€™ rule, P( I 1 | H ) = P( H | I 1 ) P( I 1 ) = 0.313. P( H | I 1 ) P( I 1 ) + P( H | I 2 ) P( I 2 ) + P( H | I 3 ) P( I 3 ) 2.154 Let Y = the number of pairs chosen. Then, the possible values are 0, 1, and 2. โŽ›10 โŽž โŽ› 5โŽž a. There are โŽœโŽœ โŽŸโŽŸ = 210 ways to choose 4 socks from 10 and there are โŽœโŽœ โŽŸโŽŸ 24 = 80 ways โŽ4โŽ  โŽ4โŽ  to pick 4 non-matching socks. So, P(Y = 0) = 80/210. โŽ›nโŽž b. Generalizing the above, the probability is โŽœโŽœ โŽŸโŽŸ 2 2 r โŽ 2r โŽ  2.155 a. P(A) = .25 + .1 + .05 + .1 = .5 b. P(AโˆฉB) = .1 + .05 = 0.15. c. 0.10 d. Using the result from Ex. 2.80, 2.156 a. i. 1 โ€“ 5686/97900 = 0.942 ii. 10560/14113 = 0.748 โŽ› 2n โŽž โŽœโŽœ โŽŸโŽŸ . โŽ 2r โŽ  .25 + .25 โˆ’ .15 = 0.875. .4 ii. (97900 โ€“ 43354)/97900 = 0.557 iv. (646+375+568)/11533 = 0.138 b. If the US population in 2002 was known, this could be used to divide into the total number of deaths in 2002 to give a probability. 2.157 Let D denote death due to lung cancer and S denote being a smoker. Thus: P( D ) = P( D | S ) P( S ) + P( D | S ) P( S ) = 10 P( D | S )(.2) + P( D | S )(.8) = 0.006. Thus, P( D | S ) = 0.021 . 2.158 Let W denote the even that the first ball is white and B denote the event that the second ball is black. Then: b (w) w P( B | W ) P(W ) P(W | B ) = = b ww+b+ n w+b b+ n b = P( B | W ) P(W ) + P( B | W ) P(W ) w+b+n w +b + n ( w +b ) + w +b + n ( w +b ) 2.159 Note that S = S โˆช 0/ , and S and 0/ are disjoint. So, 1 = P(S) = P(S) + P( 0/ ). So, P( 0/ ) = 0. Chapter 2: Probability 27 Instructorโ€™s Solutions Manual 2.160 There are 10 nondefective and 2 defective tubes that have been drawn from the machine, โŽ›12 โŽž and number of distinct arrangements is โŽœโŽœ โŽŸโŽŸ = 66. โŽ2โŽ  a. The probability of observing the specific arrangement is 1/66. b. There are two such arrangements that consist of โ€œruns.โ€ In addition to what was given in part a, the other is DDNNNNNNNNNNNN. Thus, the probability of two runs is 2/66 = 1/33. 2.161 We must find P(R โ‰ค 3) = P(R = 3) + P(R = 2), since the minimum value for R is 2. Id the two Dโ€™s occurs on consecutive trials (but not in positions 1 and 2 or 11 and 12), there are 9 such arrangements. The only other case is a defective in position 1 and 12, so that (combining with Ex. 2.160 with R = 2), there are 12 possibilities. So, P(R โ‰ค 3) = 12/66. 2.162 There are 9! ways for the attendant to park the cars. There are 3! ways to park the expensive cars together and there are 7 ways the expensive cars can be next to each other in the 9 spaces. So, the probability is 7(3!)/9! = 1/12. 2.163 Let A be the event that current flows in design A and let B be defined similarly. Design A will function if (1 or 2) & (3 or 4) operate. Design B will function if (1 & 3) or (2 & 4) operate. Denote the event Ri = {relay i operates properly}, i = 1, 2, 3, 4. So, using independence and the addition rule, P(A) = ( R1 โˆช R2 ) โˆฉ ( R3 โˆช R4 ) = (.9 + .9 โ€“ .92)(.9 + .9 โ€“ .92) = 0.9801. P(B) = ( R1 โˆฉ R3 ) โˆช ( R2 โˆฉ R4 ) = .92 + .92 โ€“ (.92)2 = .9639. So, design A has the higher probability. 2.164 Using the notation from Ex. 2.163, P( R1 โˆฉ R4 | A) = P( R1 โˆฉ R4 โˆฉ A) / P( A) . Note that R1 โˆฉ R4 โˆฉ A = R1 โˆฉ R4 , since the event R1 โˆฉ R4 represents a path for the current to flow. The probability of this above event is .92 = .81, and the conditional probability is in question is .81/.9801 = 0.8264. 2.165 Using the notation from Ex. 2.163, P( R1 โˆฉ R4 | B ) = P( R1 โˆฉ R4 โˆฉ B ) / P( B ) . R1 โˆฉ R4 โˆฉ B = ( R1 โˆฉ R4 ) โˆฉ ( R1 โˆฉ R3 ) โˆช ( R2 โˆฉ R4 ) = ( R1 โˆฉ R4 โˆฉ R3 ) โˆช ( R2 โˆฉ R4 ) . The probability of the above event is .93 + .92 – .94 = 0.8829. So, the conditional probability in question is .8829/.9639 = 0.916. โŽ›8โŽž 2.166 There are โŽœโŽœ โŽŸโŽŸ = 70 ways to choose the tires. If the best tire the customer has is ranked โŽ4โŽ  โŽ› 5โŽž #3, the other three tires are from ranks 4, 5, 6, 7, 8. There are โŽœโŽœ โŽŸโŽŸ = 10 ways to select โŽ 3โŽ  three tires from these five, so that the probability is 10/70 = 1/7. Chapter 2: Probability 28 Instructorโ€™s Solutions Manual โŽ›7โŽž 2.167 If Y = 1, the customer chose the best tire. There are โŽœโŽœ โŽŸโŽŸ = 35 ways to choose the โŽ 3โŽ  remaining tires, so P(Y = 1) = 35/70 = .5. โŽ›6โŽž If Y = 2, the customer chose the second best tire. There are โŽœโŽœ โŽŸโŽŸ = 20 ways to choose the โŽ 3โŽ  remaining tires, so P(Y = 2) = 20/70 = 2/7. Using the same logic, P(Y = 4) = 4/70 and so P(Y = 5) = 1/70. 2.168 a. The two other tires picked by the customer must have ranks 4, 5, or 6. So, there are โŽ› 3โŽž โŽœโŽœ โŽŸโŽŸ = 3 ways to do this. So, the probability is 3/70. โŽ2โŽ  b. There are four ways the range can be 4: #1 to #5, #2 to #6, #3 to #7, and #4 to #8. Each has probability 3/70 (as found in part a). So, P(R = 4) = 12/70. c. Similar to parts a and b, P(R = 3) = 5/70, P(R = 5) = 18/70, P(R = 6) = 20/70, and P(R = 7) = 15/70. 2.169 a. For each beer drinker, there are 4! = 24 ways to rank the beers. So there are 243 = 13,824 total sample points. b. In order to achieve a combined score of 4 our less, the given beer may receive at most one score of two and the rest being one. Consider brand A. If a beer drinker assigns a one to A there are still 3! = 6 ways to rank the other brands. So, there are 63 ways for brand A to be assigned all ones. Similarly, brand A can be assigned two ones and one two in 3(3!)3 ways. Thus, some beer may earn a total rank less than or equal to four in 4[63 + 3(3!)3] = 3456 ways. So, the probability is 3456/13824 = 0.25. โŽ›7โŽž 2.170 There are โŽœโŽœ โŽŸโŽŸ = 35 ways to select three names from seven. If the first name on the list is โŽ 3โŽ  โŽ›6โŽž included, the other two names can be picked โŽœโŽœ โŽŸโŽŸ = 15 ways. So, the probability is 15/35 โŽ2โŽ  = 3/7. 2.171 It is stated that the probability that Skylab will hit someone is (unconditionally) 1/150, without regard to where that person lives. If one wants to know the probability condition on living in a certain area, it is not possible to determine. 2.172 Only P( A | B + P( A | B ) = 1 is true for any events A and B. Chapter 2: Probability 29 Instructorโ€™s Solutions Manual 2.173 Define the events: D: item is defective C: item goes through inspection Thus P(D) = .1, P(C|D) = .6, and P(C | D ) = .2. Thus, P (C | D ) P ( D ) = .25. P( D | C ) = P (C | D ) P ( D ) + P (C | D ) P ( D ) 2.174 Let A = athlete disqualified previously B = athlete disqualified next term Then, we know P( B | A ) = .15, P( B | A) = .5, P( A) = .3 . To find P(B), use the law of total probability: P(B) = .3(.5) + .7(.15) = 0.255. 2.175 Note that P(A) = P(B) = P(C) = .5. But, P( A โˆฉ B โˆฉ C ) = P(HH) = .25 โ‰  (.5)3. So, they are not mutually independent. 2.176 a. P[( A โˆช B ) โˆฉ C )] = P[( A โˆฉ C ) โˆช ( B โˆฉ C )] = P( A โˆฉ C ) + P( B โˆฉ C ) โˆ’ P( A โˆฉ B โˆฉ C ) = P( A) P(C ) + P( B ) P(C ) โˆ’ P( A) P( B ) P(C ) = [ P( A) + P( B ) โˆ’ P( A) P( B )]P(C ) = P( A โˆฉ B ) P(C ) b. Similar to part a above. 2.177 a. P(no injury in 50 jumps) = (49/50)50 = 0.364. b. P(at least one injury in 50 jumps) = 1 โ€“ P(no injury in 50 jumps) = 0.636. c. P(no injury in n jumps) = (49/50)n โ‰ฅ 0.60, so n is at most 25. 2.178 Define the events: E: person is exposed to the flu F: person gets the flu Consider two employees, one of who is inoculated and one not. The probability of interest is the probability that at least one contracts the flu. Consider the complement: P(at least one gets the flu) = 1 โ€“ P(neither employee gets the flu). For the inoculated employee: P( F ) = P( F โˆฉ E ) + P( F โˆฉ E ) = .8(.6) + 1(.4) = 0.88. For the non-inoculated employee: P( F ) = P( F โˆฉ E ) + P( F โˆฉ E ) = .1(.6) + 1(.4) = 0.46. So, P(at least one gets the flu) = 1 โ€“ .88(.46) = 0.5952 2.179 a. The gamblers break even if each win three times and lose three times. Considering the โŽ›6โŽž possible sequences of โ€œwinsโ€ and โ€œlossesโ€, there are โŽœโŽœ โŽŸโŽŸ = 20 possible orderings. Since โŽ 3โŽ  each has probability ( 12 ) , the probability of breaking even is 20 ( 12 ) = 0.3125. b. In order for this event to occur, the gambler Jones must have $11 at trial 9 and must win on trial 10. So, in the nine remaining trials, seven โ€œwinsโ€ and two โ€œlossesโ€ must be โŽ›9โŽž placed. So, there are โŽœโŽœ โŽŸโŽŸ = 36 ways to do this. However, this includes cases where โŽ2โŽ  Jones would win before the 10th trial. Now, Jones can only win the game on an even trial (since he must gain $6). Included in the 36 possibilities, there are three ways Jones could 6 6 Chapter 2: Probability 30 Instructorโ€™s Solutions Manual win on trial 6: WWWWWWWLL, WWWWWWLLW, WWWWWWLWL, and there are six ways Jones could win on trial 8: LWWWWWWWL, WLWWWWWWL, WWLWWWWWL, WWWLWWWWL, WWWWLWWWL, WWWWWLWWL. So, these nine cases must be 10 removed from the 36. So, the probability is 27 ( 12 ) . 2.180 a. If the patrolman starts in the center of the 16×16 square grid, there are 48 possible paths to take. Only four of these will result in reaching the boundary. Since all possible paths are equally likely, the probability is 4/48 = 1/47. b. Assume the patrolman begins by walking north. There are nine possible paths that will bring him back to the starting point: NNSS, NSNS, NSSN, NESW, NWSE, NWES, NEWS, NSEW, NSWE. By symmetry, there are nine possible paths for each of north, south, east, and west as the starting direction. Thus, there are 36 paths in total that result in returning to the starting point. So, the probability is 36/48 = 9/47. 2.181 We will represent the n balls as 0โ€™s and create the N boxes by placing bars ( | ) between the 0โ€™s. For example if there are 6 balls and 4 boxes, the arrangement 0|00||000 represents one ball in box 1, two balls in box 2, no balls in box 3, and three balls in box 4. Note that six 0โ€™s were need but only 3 bars. In general, n 0โ€™s and N โ€“ 1 bars are needed to โŽ› N + n โˆ’ 1โŽž โŽŸโŽŸ represent each possible placement of n balls in N boxes. Thus, there are โŽœโŽœ โŽ N โˆ’1 โŽ  ways to arrange the 0โ€™s and bars. Now, if no two bars are placed next to each other, no box will be empty. So, the N โ€“ 1 bars must be placed in the n โ€“ 1 spaces between the 0โ€™s. โŽ› n โˆ’1 โŽž โŽŸโŽŸ , so that the probability is as given in the The total number of ways to do this is โŽœโŽœ โŽ N โˆ’ 1โŽ  problem.

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