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Econ 250 Fall 2010 Due at November 16 Assignment 2: Binomial Distribution, Continuous Random Variables and Sampling 1. Suppose a firm wishes to raise funds and there are a large number of independent financial lenders who might lend from 0 to $10 million dollars each. The total amount raised follows a uniform distribution from 0 to $10n million dollars, where n is the number of lenders. If the firm is to have at least 80% chance of raising at least $100 million dollars what is the minimum number of lenders that should be contacted? Solution: This is a uniform distribution question. Let X be the total amount raised. X is distributed uniformly on [0,10n]. 1 The density function is: f (x) = 10n The probability of raising more than $100 is at least 80% P (X > 100) = 1 − P (X < 100) = 1 − 100 ≥ 80% 10n ⇒ n ≥ 50 At least 50 lenders should be contracted. 2. The probability that a person catches a cold during the cold and flu season is 0.4. Assume that 10 people are chosen at random. Solution: This is a binomial question. A success occurs when a person catches a cold during the cold and flu season. The probability of a success is 0.4. Let X be the number of successes in 10 people. (a) What is the probability that exactly 4 people have the flu? P (X = 4) = ( 10 )(0.4)4 (0.6)6 = 0.2508 4 (b) What is the probability that between 2 and 5 people inclusive have the flu? P (2 ≤ X ≤ 5) = P (X ≤ 5) − P (X ≤ 1) = 0.834 − 0.046 = 0.788 (c) What is the expected number of people with the flu and what is its variance? E[X] = µ = np = 10 × 0.4 = 4 V [X] = σ 2 = np(1 − p) = 2.4 1 (d) Approximate your answer in (b) using the normal approximation with and without continuity corrections. Without continuity correction: 2−4 5−4 X −µ P (2 ≤ X ≤ 5) ≈ P ( √ ≤ √ ) ≤ σ 2.4 2.4 = P (−1.2910 ≤ Z ≤ 0.6455) = F (0.6455) − (1 − F (1.2910)) = 0.7406 − (1 − 0.9015) = 0.6421 With continuity correction: 5.5 − 4 X −µ 1.5 − 4 ≤ √ ≤ ) P (2 ≤ X ≤ 5) ≈ P ( √ σ 2.4 2.4 = P (−1.6137 ≤ Z ≤ 0.9682) = F (0.9682) − (1 − F (1.6137)) = 0.834 − (1 − 0.9463) = 0.7803 3. The following table displays the joint probability distribution of X and Y. X/Y 0 1 2 0 .13 .16 .07 1 2 .08 .02 .14 .23 .04 .13 Solution: (a) What is the covariance and correlation between the X and Y? Are these variables independent? Explain. X E[X] = µX = xP (x) = 1.01 X E[Y ] = µY = yP (y) = 1.02 X V [X] = σ X 2 = (X − µX )2 P (x) = 0.4699 X V [Y ] = σ Y 2 = (Y − µY )2 P (y) = 0.7396 XX Cov(X, Y ) = E(XY ) − µX µY = xyP (x, y) − µX µY = 0.1698 X Y 0.1698 Cov(X, Y ) √ =√ = 0.2880 Corr = σX σY 0.4699 0.7396 2 (b) Calculate the mean and variance of D D = 2 + 4X − 2Y E(D) = 2 + 4E(X) − 2E(Y ) = 2 + 4(1.01) − 2(1.02) = 4 V [D] = 42 V [X] + 22 V [Y ] − 2(4)(2)Cov(X, Y ) = 16(0.4699) + 4(0.7396) − 16(0.1698) = 7.76 (c) Write out the joint cumulative distribution. F(X,Y) F(X,0) F(X,1) F(X,2) F(0,Y) 0.13 0.21 0.23 F(1,Y) 0.29 0.51 0.76 F(2,Y) 0.36 0.62 1 4. Suppose we know the number of sales X by any sales person follows a normal distribution with a mean of 61.7 and a standard deviation of 5.2. Solution: X ∼ N (61.7, 5.22 ) (a) What is P (62.5 < X < 64)? 64 − 61.7 62.5 − 61.7 <Z< ) = P (0.1538 < Z < 0.4423) 5.2 5.2 = F (0.44) − F (0.15) = 0.67 − 0.5596 = 0.1104 P (62.5 < X < 64) = P ( (b) What is the P (62.5 < X̄3 < 64) where X̄3 is the average sales from three (independent) sales persons? 62.5 − 61.7 64 − 61.7 √ √ ) = P (0.2665 < Z < 0.7661) <Z< 5.2/ 3 5.2/ 3 = F (0.77) − F (0.27) = 0.7794 − 0.6064 = 0.173 P (62.5 < X̄3 < 64) = P ( (c) What is the value of k such that P (X > k) = 0.63? F (−0.33) ≈ 1 − 0.63 X = Zσ + µ = −0.33(5.2) + 61.7 = 59.984 (d) What is the value of k such that P (59 < X < k) = 0.54? 59 − 61.7 < Z < Zk ) = P (−0.52 < Z < Zk ) 5.2 = F (Zk ) − (1 − F (0.52)) = 0.54 ⇒ F (Zk ) = 0.54 + 1 − F (0.52) = 1.54 − 0.6985 = 0.8415 ⇒ Zk ≈ 1 P (59 < X < k) = P ( Thus k = Zk σ + µ = 1(5.2) + 61.7 = 66.9 3 5. Sales at a local electrical wholesaler consist of both over-the-counter sales as well as deliveries. During the course of a month, over-the-counter sales have a mean of $96,780 with a standard deviation of $12,520. Over the same time period, deliveries average $229,620 with a standard deviation of $234,100. Assume that over-the-counter sales and deliveries have a correlation of .2. Solution: Let SC denote over-the-counter sales and SD denote deliveries. SC ∼ N (96780, 125202 ) and SD ∼ N (229620, 2341002 ) Corr(SC , SD ) = 0.2 (a) What is the mean, variance and distribution of all sales S? All sales S = SC + SD E[S] = µS = E[SC ] + E[SD ] = 96780 + 229620 = 326400 p p V [S] = σ s 2 = V [SC ] + V [SD ] + 2(Corr)( V (SC ))( V (SD )) = 125202 + 2341002 + 2(0.2)(12520)(234100) = 5.613 × 1010 Now we can see that S ∼ N (326400, 5.613 × 1010 ) (b) What is the P (222, 900 < S < 240, 400)? 240, 400 − 326400 222, 900 − 326400 <Z< √ ) P (222, 900 < S < 240, 400) = P ( √ 10 5.613 × 10 5.613 × 1010 = P (−0.4369 < Z < −0.3630) = F (0.4369) − F (0.363) = 0.0294 6. Suppose X is uniform distribution over the interval 0 to 150. (a) Find the mean and variance. 150 + 0 a+b = = 75 2 2 (b − a)2 1502 = = = 1875 12 12 µX = σ2 (b) Find the value that leaves .05 in the lower tail and also the value that leaves .05 in the upper tail. XL − 0 ⇒ XL = 7.5 150 150 − XU 0.05 = ⇒ XU = 142.5 150 0.05 = 4 (c) Suppose that you do not know that the variable is uniform but are given the mean and variance from (a). Calculate the same magnitudes for (b). √ F (ZL = −1.645) = 0.05 ⇒ XL = (−1.645) 1875 + 75 = 3.7694 √ 1 − F (ZU = 1.645) = 0.05 ⇒ XU = (1.645) 1875 + 75 = 146.2306 (d) Draw the two distributions to explain these results. 7. Two classes of statistics have grades that are normally and independently distributed with C1 ∼ N (75, 12) and C2 ∼ N (80, 22). (a) What is the expected difference and its variance? C = C1 − C2 The expected difference and its variance: E[C] = µC = E[C1 ] − E[C2 ] = 75 − 80 = −5 V [C] = σ C 2 = V [C1 ] + V [C2 ] = 12 + 22 = 34 (b) What is the probability that the difference from picking 1 student from each class is between -1 and 1? −1 − (−5) 1 − (−5) √ <Z< √ ) 34 34 = P (0.6860 < Z < 1.0290) = F (1.03) − F (0.69) = 0.0936 P (−1 < C < 1) = P ( (c) To give the class the same mean as the second class, the professor adds 5 to all grades. Explain why this does not leave the two classes equivalent. Which class would you prefer to be in? 8. A car company says their car gets a mean of 45km per liter with a standard deviation of 6. Suppose we assume a normal distribution. Solution: (a) Suppose some sales representative claims you will get at least 47 80% of the time, what can you tell him? 1 47 − 45 ) = P (Z ≥ ) = 1 − F (0.333) = 0.3707 6 3 (b) If we have 4 cars and take the average, calculate the P (44 < X̄4 < 46). P (X ≥ 47) = P (Z ≥ 44 − 45 46 − 45 √ <Z< √ ) 6/ 4 6/ 4 = P (−0.3333 < Z < 0.3333) = F (0.33) − (1 − F (0.33)) = 2(0.6293) − 1 = 0.2586 P (44 < X̄4 < 46) = P ( 5 9. Suppose you wish to drive across a country that is 2625 km wide and you intend to rent a series of cars from Rent-A-Wreck. The distance that the first car they give you is normally distributed with a mean distance of 1500km and a variance of 500km. Each subsequent car you rent gets 50% less km on average than the previous one with a 75% reduction in the variance. (a) Try to formulize this problem. (b) What is the probability that the trip can be done using exactly 2 cars? (c) What is the probability that you do the trip with more than 3 cars? (d) If each car costs $100 what is the expected cost of the trip? (e) Approximate the expected length of the farthest trip that can be taken. Let Xi be the distance travelled by car i X1 ∼ N (1500, 500) X2 ∼ N (750, 125) X3 ∼ N (375, 31.5) ... and so on Consider the first car 1 > P (X1 > 2625) = P ( X1σ−µ 1 2625−1500 √ ) 500 ⇒ P (Z > 50.3) ≈ 0 Consider the distance traveled by the first car and then the second car √ 2 −(µ1 +µ2 ) > P (X1 + X2 > 2625) = P ( X1 +X 2 2 σ 1 +σ 2 2625−(1500+750) √ ) 500+125 ⇒ P (Z > 15) ≈ 0 Now the third car: P (X1 + X2 + X3 > 2625) √2 +X3 −(µ1 +µ2 +µ3 ) > = P ( X1 +X 2 2 2 σ 1 +σ 2 +σ 3 2625−(1500+750+375) √ ) 500+125+31.5 ⇒ P (Z > 0) = 0.5 So n=3 Expected cost of the trip is $300. Farthest trip possible T (geometric series) T∞ = X1 + X2 + X3 + ... = 1 × X1 1 − 0.5 E[T∞ ] = 2 × 1500 = 3000 6