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PSTAT 120B Probability and Statistics - Week 2 Fang-I Chu University of California, Santa Barbara October 11, 2012 Fang-I Chu PSTAT 120B Probability and Statistics couple notes about hw1 about #3(6.14): Fang-I Chu PSTAT 120B Probability and Statistics couple notes about hw1 about #3(6.14): uses transformation method. We can begin with CDF to do the transformation, or set the Jacobian and use the transformation formula. Fang-I Chu PSTAT 120B Probability and Statistics couple notes about hw1 about #3(6.14): uses transformation method. We can begin with CDF to do the transformation, or set the Jacobian and use the transformation formula. carefully compute integral. Fang-I Chu PSTAT 120B Probability and Statistics couple notes about hw1 about #3(6.14): uses transformation method. We can begin with CDF to do the transformation, or set the Jacobian and use the transformation formula. carefully compute integral. this type of problem is very IMPORTANT. Same type of problem came up again in hw2 #1. Fang-I Chu PSTAT 120B Probability and Statistics couple notes about hw1 about #3(6.14): uses transformation method. We can begin with CDF to do the transformation, or set the Jacobian and use the transformation formula. carefully compute integral. this type of problem is very IMPORTANT. Same type of problem came up again in hw2 #1. about #2(3.148) and #6(6.40) Fang-I Chu PSTAT 120B Probability and Statistics couple notes about hw1 about #3(6.14): uses transformation method. We can begin with CDF to do the transformation, or set the Jacobian and use the transformation formula. carefully compute integral. this type of problem is very IMPORTANT. Same type of problem came up again in hw2 #1. about #2(3.148) and #6(6.40) Answer or compute in the way what question asked: Fang-I Chu PSTAT 120B Probability and Statistics couple notes about hw1 about #3(6.14): uses transformation method. We can begin with CDF to do the transformation, or set the Jacobian and use the transformation formula. carefully compute integral. this type of problem is very IMPORTANT. Same type of problem came up again in hw2 #1. about #2(3.148) and #6(6.40) Answer or compute in the way what question asked: 1. #2(3.148) ask you to derive V (Y ) using ln m(t). Fang-I Chu PSTAT 120B Probability and Statistics couple notes about hw1 about #3(6.14): uses transformation method. We can begin with CDF to do the transformation, or set the Jacobian and use the transformation formula. carefully compute integral. this type of problem is very IMPORTANT. Same type of problem came up again in hw2 #1. about #2(3.148) and #6(6.40) Answer or compute in the way what question asked: 1. #2(3.148) ask you to derive V (Y ) using ln m(t). 2. #6(6.40) ask you to find the density function of U = Y12 + Y22 , so if your answer leaves as MGF of U, that’s incomplete answer. If you turned in your hw1, but didn’t get it back from section today, please talk to me after section. Fang-I Chu PSTAT 120B Probability and Statistics Topics for review The Bivariate Transformation Method Hint for #1 Hint for #2 Sample distributions Hint for #3 (Exercise 7.12) Hint for #4 (Exercise 7.20) similar problem (Exercise 7.43) for #5 (Exercise 7.42) Hint for #6 (Exercise 7.54) Fang-I Chu PSTAT 120B Probability and Statistics The Bivariate Transformation Method Fang-I Chu PSTAT 120B Probability and Statistics The Bivariate Transformation Method Assumption: Y1 and Y2 are random variables with joint density function fY1 ,Y2 (y1 , y2 ) and let u1 = h1 (y1 , y2 ), u2 = h2 (y1 , y2 ) is a one-to-one transformation from (y1 , y2 ) to (u1 , u2 ) with inverse y1 = h1−1 (u1 , u2 ), y2 = h2−1 (u1 , u2 ). Fang-I Chu PSTAT 120B Probability and Statistics The Bivariate Transformation Method Assumption: Y1 and Y2 are random variables with joint density function fY1 ,Y2 (y1 , y2 ) and let u1 = h1 (y1 , y2 ), u2 = h2 (y1 , y2 ) is a one-to-one transformation from (y1 , y2 ) to (u1 , u2 ) with inverse y1 = h1−1 (u1 , u2 ), y2 = h2−1 (u1 , u2 ). Content: Fang-I Chu PSTAT 120B Probability and Statistics The Bivariate Transformation Method Assumption: Y1 and Y2 are random variables with joint density function fY1 ,Y2 (y1 , y2 ) and let u1 = h1 (y1 , y2 ), u2 = h2 (y1 , y2 ) is a one-to-one transformation from (y1 , y2 ) to (u1 , u2 ) with inverse y1 = h1−1 (u1 , u2 ), y2 = h2−1 (u1 , u2 ). Content: Jacobian is |J| = ∂h1−1 ∂u1 ∂h2−1 ∂u1 Fang-I Chu ∂h1−1 ∂u2 ∂h2−1 ∂u2 PSTAT 120B Probability and Statistics The Bivariate Transformation Method Assumption: Y1 and Y2 are random variables with joint density function fY1 ,Y2 (y1 , y2 ) and let u1 = h1 (y1 , y2 ), u2 = h2 (y1 , y2 ) is a one-to-one transformation from (y1 , y2 ) to (u1 , u2 ) with inverse y1 = h1−1 (u1 , u2 ), y2 = h2−1 (u1 , u2 ). Content: ∂h1−1 ∂h1−1 ∂u1 ∂u2 ∂h2−1 ∂h2−1 ∂u1 ∂u2 of U1 and U2 Jacobian is |J| = The joint density is fU1 ,U2 (u1 , u2 ) = fY1 ,Y2 (h1−1 (u1 , u2 ), h2−1 (u1 , u2 ))|J| Fang-I Chu PSTAT 120B Probability and Statistics Hint for #1 #1 Suppose that Y1 and Y2 are independent Gamma random variables with the same beta parameter value β but possibly different alpha 1 parameter values α1 and α2 . Define S = Y1 + Y2 and R = Y1Y+Y . 2 (i) Derive the joint PDF of (R, S). (ii) Hence show that S has a Gamma distribution- specify the parameters- and that R has a Beta distribution. (iii) Are R and S independent? Why? Fang-I Chu PSTAT 120B Probability and Statistics Hint for #1(i) 1(i) Derive the joint PDF of (R, S). Hint for(i): Fang-I Chu PSTAT 120B Probability and Statistics Hint for #1(i) 1(i) Derive the joint PDF of (R, S). Hint for(i): Known: Fang-I Chu PSTAT 120B Probability and Statistics Hint for #1(i) 1(i) Derive the joint PDF of (R, S). Hint for(i): Known: Y1 ∼ Γ(α1 , β) and Y2 ∼ Γ(α2 , β). Fang-I Chu PSTAT 120B Probability and Statistics Hint for #1(i) 1(i) Derive the joint PDF of (R, S). Hint for(i): Known: Y1 ∼ Γ(α1 , β) and Y2 ∼ Γ(α2 , β). Y1 and Y2 are independent. Fang-I Chu PSTAT 120B Probability and Statistics Hint for #1(i) 1(i) Derive the joint PDF of (R, S). Hint for(i): Known: Y1 ∼ Γ(α1 , β) and Y2 ∼ Γ(α2 , β). Y1 and Y2 are independent. Facts: Fang-I Chu PSTAT 120B Probability and Statistics Hint for #1(i) 1(i) Derive the joint PDF of (R, S). Hint for(i): Known: Y1 ∼ Γ(α1 , β) and Y2 ∼ Γ(α2 , β). Y1 and Y2 are independent. Facts: Y1 and Y2 are independent, so we have fY1 ,Y2 (y1 , y2 ) = fY1 (y1 )fY2 (y2 ) Fang-I Chu PSTAT 120B Probability and Statistics Hint for #1(i) 1(i) Derive the joint PDF of (R, S). Hint for(i): Known: Y1 ∼ Γ(α1 , β) and Y2 ∼ Γ(α2 , β). Y1 and Y2 are independent. Facts: Y1 and Y2 are independent, so we have fY1 ,Y2 (y1 , y2 ) = fY1 (y1 )fY2 (y2 ) 1 S = Y1 + Y2 , R = Y1Y+Y , implying Y1 = RS and 2 Y2 = (1 − R)S Fang-I Chu PSTAT 120B Probability and Statistics Hint for #1(i) 1(i) Derive the joint PDF of (R, S). Hint for(i): Known: Y1 ∼ Γ(α1 , β) and Y2 ∼ Γ(α2 , β). Y1 and Y2 are independent. Facts: Y1 and Y2 are independent, so we have fY1 ,Y2 (y1 , y2 ) = fY1 (y1 )fY2 (y2 ) 1 S = Y1 + Y2 , R = Y1Y+Y , implying Y1 = RS and 2 Y2 = (1 − R)S 0 < r < 1, 0 < s < ∞ Fang-I Chu PSTAT 120B Probability and Statistics Hint for #1(i) 1(i) Derive the joint PDF of (R, S). Hint for(i): Known: Y1 ∼ Γ(α1 , β) and Y2 ∼ Γ(α2 , β). Y1 and Y2 are independent. Facts: Y1 and Y2 are independent, so we have fY1 ,Y2 (y1 , y2 ) = fY1 (y1 )fY2 (y2 ) 1 S = Y1 + Y2 , R = Y1Y+Y , implying Y1 = RS and 2 Y2 = (1 − R)S 0 < r < 1, 0 < s < ∞ dy1 dy1 s r dr ds = |J| = dy dy2 2 −s 1 − r = s dr ds Fang-I Chu PSTAT 120B Probability and Statistics Hint for #1(i) 1(i) Derive the joint PDF of (R, S). Hint for(i): Fang-I Chu PSTAT 120B Probability and Statistics Hint for #1(i) 1(i) Derive the joint PDF of (R, S). Hint for(i): Way to obtain joint pdf of (R, S). Fang-I Chu PSTAT 120B Probability and Statistics Hint for #1(i) 1(i) Derive the joint PDF of (R, S). Hint for(i): Way to obtain joint pdf of (R, S). Apply bivariate transformation method, you will obtain the answer! Fang-I Chu PSTAT 120B Probability and Statistics Hint for #1(ii) 1 (ii)Hence show that S has a Gamma distribution- specify the parameters- and that R has a Beta distribution. (iii) Are R and S independent? Why? Hint for (ii): Fang-I Chu PSTAT 120B Probability and Statistics Hint for #1(ii) 1 (ii)Hence show that S has a Gamma distribution- specify the parameters- and that R has a Beta distribution. (iii) Are R and S independent? Why? Hint for (ii): Known: Fang-I Chu PSTAT 120B Probability and Statistics Hint for #1(ii) 1 (ii)Hence show that S has a Gamma distribution- specify the parameters- and that R has a Beta distribution. (iii) Are R and S independent? Why? Hint for (ii): Known: obtained joint pdf of (R, S): 1 s α1 +α2 −1 s exp − β α1 +α2 Γ(α1 + α2 ) β Γ(α1 + α2 ) α1 −1 × r (1 − r )α2 −1 Γ(α1 )Γ(α2 ) fR,S (r , s) = Fang-I Chu PSTAT 120B Probability and Statistics Hint for #1(ii) 1 (ii)Hence show that S has a Gamma distribution- specify the parameters- and that R has a Beta distribution. (iii) Are R and S independent? Why? Hint for (ii): Known: obtained joint pdf of (R, S): 1 s α1 +α2 −1 s exp − β α1 +α2 Γ(α1 + α2 ) β Γ(α1 + α2 ) α1 −1 × r (1 − r )α2 −1 Γ(α1 )Γ(α2 ) fR,S (r , s) = Note the joint pdf of (R, S) is obtained in (a), and you will NEED to show complete computation how you get your joint pdf in your hw for 1(a) part. Fang-I Chu PSTAT 120B Probability and Statistics Hint for #1(ii) 1 (ii)Hence show that S has a Gamma distribution- specify the parameters- and that R has a Beta distribution. (iii) Are R and S independent? Why? Hint for (ii): Fang-I Chu PSTAT 120B Probability and Statistics Hint for #1(ii) 1 (ii)Hence show that S has a Gamma distribution- specify the parameters- and that R has a Beta distribution. (iii) Are R and S independent? Why? Hint for (ii): Observe and think: Fang-I Chu PSTAT 120B Probability and Statistics Hint for #1(ii) 1 (ii)Hence show that S has a Gamma distribution- specify the parameters- and that R has a Beta distribution. (iii) Are R and S independent? Why? Hint for (ii): Observe and think: Do you recognize the joint pdf of (R, S) is composed by a Gamma pdf and a Beta distribution? Fang-I Chu PSTAT 120B Probability and Statistics Hint for #1(ii) 1 (ii)Hence show that S has a Gamma distribution- specify the parameters- and that R has a Beta distribution. (iii) Are R and S independent? Why? Hint for (ii): Observe and think: Do you recognize the joint pdf of (R, S) is composed by a Gamma pdf and a Beta distribution? Specify the parameters for Gamma distribution and for Beta distribution! Hint for (iii): Fang-I Chu PSTAT 120B Probability and Statistics Hint for #1(ii) 1 (ii)Hence show that S has a Gamma distribution- specify the parameters- and that R has a Beta distribution. (iii) Are R and S independent? Why? Hint for (ii): Observe and think: Do you recognize the joint pdf of (R, S) is composed by a Gamma pdf and a Beta distribution? Specify the parameters for Gamma distribution and for Beta distribution! Hint for (iii): Does the range of R and S independent of each other? Fang-I Chu PSTAT 120B Probability and Statistics Hint for #1(ii) 1 (ii)Hence show that S has a Gamma distribution- specify the parameters- and that R has a Beta distribution. (iii) Are R and S independent? Why? Hint for (ii): Observe and think: Do you recognize the joint pdf of (R, S) is composed by a Gamma pdf and a Beta distribution? Specify the parameters for Gamma distribution and for Beta distribution! Hint for (iii): Does the range of R and S independent of each other? What does Theorem 5.5 state? Fang-I Chu PSTAT 120B Probability and Statistics Hint for #2 #2 The random variables X and Y are independent Exponential both X with mean 1. Define R = X +Y . Obtain the CDF of R. What is this distribution? Fang-I Chu PSTAT 120B Probability and Statistics Hint for #2 #2 The random variables X and Y are independent Exponential both X with mean 1. Define R = X +Y . Obtain the CDF of R. What is this distribution? Known: X ∼ exp(1) and Y ∼ exp(1) Fang-I Chu PSTAT 120B Probability and Statistics Hint for #2 #2 The random variables X and Y are independent Exponential both X with mean 1. Define R = X +Y . Obtain the CDF of R. What is this distribution? Known: X ∼ exp(1) and Y ∼ exp(1) X ≤ r) X +Y = P(X ≤ r (X + Y )) P(R ≤ r ) = P( = P((1 − r )X ≤ rY ) 1−r = P(Y ≥ X) r Z Z ∞ ∞ e −y dye −x dx = 0 Fang-I Chu 1−r r X PSTAT 120B Probability and Statistics Hint for #2 #2 The random variables X and Y are independent Exponential both X with mean 1. Define R = X +Y . Obtain the CDF of R. What is this distribution? Known: X ∼ exp(1) and Y ∼ exp(1) X ≤ r) X +Y = P(X ≤ r (X + Y )) P(R ≤ r ) = P( = P((1 − r )X ≤ rY ) 1−r = P(Y ≥ X) r Z Z ∞ ∞ e −y dye −x dx = 0 Fang-I Chu 1−r r X PSTAT 120B Probability and Statistics Some important distributions Fang-I Chu PSTAT 120B Probability and Statistics Some important distributions Let Y1 , Y2 , . . . , Yn be a random sample of size n from a normal P distribution with mean µ and variance σ 2 . Then 1 Ȳ = n ni=1 Yi is normally distributed with mean µȲ = µ and 2 variance σȲ2 = σn . Fang-I Chu PSTAT 120B Probability and Statistics Some important distributions Let Y1 , Y2 , . . . , Yn be a random sample of size n from a normal P distribution with mean µ and variance σ 2 . Then 1 Ȳ = n ni=1 Yi is normally distributed with mean µȲ = µ and 2 variance σȲ2 = σn . Then Zi = Yiσ−µ has standard normal distribution. i.e. Z ∼ N (0, 1). Fang-I Chu PSTAT 120B Probability and Statistics Some important distributions Let Y1 , Y2 , . . . , Yn be a random sample of size n from a normal P distribution with mean µ and variance σ 2 . Then 1 Ȳ = n ni=1 Yi is normally distributed with mean µȲ = µ and 2 variance σȲ2 = σn . Then Zi = Yiσ−µ has standard normal distribution. i.e. Z ∼ N (0, 1). Pn Pn Yi −µ has a χ2 distribution with n degrees of i=1 Zi = i=1 σ freedom. Fang-I Chu PSTAT 120B Probability and Statistics Some important distributions Let Y1 , Y2 , . . . , Yn be a random sample of size n from a normal P distribution with mean µ and variance σ 2 . Then 1 Ȳ = n ni=1 Yi is normally distributed with mean µȲ = µ and 2 variance σȲ2 = σn . Then Zi = Yiσ−µ has standard normal distribution. i.e. Z ∼ N (0, 1). Pn Pn Yi −µ has a χ2 distribution with n degrees of i=1 Zi = i=1 σ freedom. (n−1)S 2 σ2 has a χ2 distribution with (n − 1) degrees of freedom. 1 Pn 2 Recall S 2 = n−1 i=1 (Yi − Ȳ ) Fang-I Chu PSTAT 120B Probability and Statistics Hint for #3(Exercise 7.12) 7.12 Suppose the forester in Exercise 7.11 would like the sample mean to be within 1 square inch of the population mean, with probability 0.90. How many trees must be measure in order to ensure this degree of accuracy? 7.11 A forester studying the effects of fertilization on certain pine forests in the Southeast is interested in estimating the average basal area of pine trees. In studying basal areas of similar trees for many years, he has discovered that these measurements (in square inches) are normally distributed with standard deviation approximately 4 square inches. If the forester samples n = 9 trees, find the probability that the sample mean will be within 2 square inches of the population mean. Fang-I Chu PSTAT 120B Probability and Statistics Hint for #3(Exercise 7.12) Think: Fang-I Chu PSTAT 120B Probability and Statistics Hint for #3(Exercise 7.12) Think: Do you understand the problem? Fang-I Chu PSTAT 120B Probability and Statistics Hint for #3(Exercise 7.12) Think: Do you understand the problem? What does this question really ask us? Fang-I Chu PSTAT 120B Probability and Statistics Hint for #3(Exercise 7.12) Think: Do you understand the problem? What does this question really ask us? Are you able to write out our goal in mathematical expression? Fang-I Chu PSTAT 120B Probability and Statistics Hint for #3(Exercise 7.12) Hint for #4 Fang-I Chu PSTAT 120B Probability and Statistics Hint for #3(Exercise 7.12) Hint for #4 Known: σ = 4 and Z = X̄ −µ σ √ n Fang-I Chu (page 354) PSTAT 120B Probability and Statistics Hint for #3(Exercise 7.12) Hint for #4 Known: σ = 4 and Z = X̄ −µ σ √ n (page 354) Goal: how large must n be to make P(|X̄ − µ| ≤ 1) ≥ 0.9 ( to ensure the degree of accuracy means we need to have at least probability 0.90, which implying our probability need to be greater or equal to 0.9) Fang-I Chu PSTAT 120B Probability and Statistics Hint for #3(Exercise 7.12) Hint for #4 Known: σ = 4 and Z = X̄ −µ σ √ n (page 354) Goal: how large must n be to make P(|X̄ − µ| ≤ 1) ≥ 0.9 ( to ensure the degree of accuracy means we need to have at least probability 0.90, which implying our probability need to be greater or equal to 0.9) Fact: P(|Z | ≤ 1.645) = 0.9( table of page 848) Fang-I Chu PSTAT 120B Probability and Statistics Hint for #3(Exercise 7.12) Hint for #4 Known: σ = 4 and Z = X̄ −µ σ √ n (page 354) Goal: how large must n be to make P(|X̄ − µ| ≤ 1) ≥ 0.9 ( to ensure the degree of accuracy means we need to have at least probability 0.90, which implying our probability need to be greater or equal to 0.9) Fact: P(|Z | ≤ 1.645) = 0.9( table of page 848) Step to find the value of n Fang-I Chu PSTAT 120B Probability and Statistics Hint for #3(Exercise 7.12) Hint for #4 Known: σ = 4 and Z = X̄ −µ σ √ n (page 354) Goal: how large must n be to make P(|X̄ − µ| ≤ 1) ≥ 0.9 ( to ensure the degree of accuracy means we need to have at least probability 0.90, which implying our probability need to be greater or equal to 0.9) Fact: P(|Z | ≤ 1.645) = 0.9( table of page 848) Step to find the value of n Find n to satisfy P( |X̄√−µ| ≤ σ n Fang-I Chu √ n σ ) = 0.9 PSTAT 120B Probability and Statistics Hint for #3(Exercise 7.12) Hint for #4 Known: σ = 4 and Z = X̄ −µ σ √ n (page 354) Goal: how large must n be to make P(|X̄ − µ| ≤ 1) ≥ 0.9 ( to ensure the degree of accuracy means we need to have at least probability 0.90, which implying our probability need to be greater or equal to 0.9) Fact: P(|Z | ≤ 1.645) = 0.9( table of page 848) Step to find the value of n Find n to satisfy P( |X̄√−µ| ≤ σ n √ n σ ) since P(|Z | ≤ 1.645) = 0.9 and that √ n σ = 0.9 X̄ −µ σ √ n = Z , We need to find n = 1.645 Fang-I Chu PSTAT 120B Probability and Statistics Hint for #3(Exercise 7.12) Hint for #4 Known: σ = 4 and Z = X̄ −µ σ √ n (page 354) Goal: how large must n be to make P(|X̄ − µ| ≤ 1) ≥ 0.9 ( to ensure the degree of accuracy means we need to have at least probability 0.90, which implying our probability need to be greater or equal to 0.9) Fact: P(|Z | ≤ 1.645) = 0.9( table of page 848) Step to find the value of n √ Find n to satisfy P( |X̄√−µ| ≤ σ n σ ) n since P(|Z | ≤ 1.645) = 0.9 and √ n σ = 1.645 that since σ = 4, we solve n in Fang-I Chu = 0.9 X̄ −µ σ √ n = Z , We need to find n √ n 4 = 1.645 PSTAT 120B Probability and Statistics Hint for #4 (Exercise 7.20) 7.20(a) If U has a χ2 distribution with v df, find E (U) and V (U). Hint for (a): Fang-I Chu PSTAT 120B Probability and Statistics Hint for #4 (Exercise 7.20) 7.20(a) If U has a χ2 distribution with v df, find E (U) and V (U). Hint for (a): MGF for U ∼ χ2 (v ): MU (t) = Fang-I Chu 1 1−2t v 2 PSTAT 120B Probability and Statistics Hint for #4 (Exercise 7.20) 7.20(a) If U has a χ2 distribution with v df, find E (U) and V (U). Hint for (a): MGF for U ∼ χ2 (v ): MU (t) = 1 1−2t v 2 Take derivatives with respect to t, then set t = 0, obtain E (U) and V (U) Fang-I Chu PSTAT 120B Probability and Statistics Hint for #4 (Exercise 7.20) 7.20(a) If U has a χ2 distribution with v df, find E (U) and V (U). Hint for (a): MGF for U ∼ χ2 (v ): MU (t) = 1 1−2t v 2 Take derivatives with respect to t, then set t = 0, obtain E (U) and V (U) similar to hw1, #2. Fang-I Chu PSTAT 120B Probability and Statistics Hint for #4 (Exercise 7.20) 7.20(b) (b). Using the results of Theorem 7.3, find E (S 2 ) and V (S 2 ) when Y1 , Y2 , . . . , Yn is a random sample from a normal distribution with mean µ and variance σ 2 Hint for (b): Fang-I Chu PSTAT 120B Probability and Statistics Hint for #4 (Exercise 7.20) 7.20(b) (b). Using the results of Theorem 7.3, find E (S 2 ) and V (S 2 ) when Y1 , Y2 , . . . , Yn is a random sample from a normal distribution with mean µ and variance σ 2 Hint for (b): 2 1 Pn 2 results of Theorem 7.3: (n−1)S = 2 i=1 (Yi − Ȳ ) has a σ σ2 χ2 distribution with (n − 1)df. Note Ȳ and S 2 are independent random variables. Fang-I Chu PSTAT 120B Probability and Statistics Hint for #4 (Exercise 7.20) 7.20(b) (b). Using the results of Theorem 7.3, find E (S 2 ) and V (S 2 ) when Y1 , Y2 , . . . , Yn is a random sample from a normal distribution with mean µ and variance σ 2 Hint for (b): 2 1 Pn 2 results of Theorem 7.3: (n−1)S = 2 i=1 (Yi − Ȳ ) has a σ σ2 χ2 distribution with (n − 1)df. Note Ȳ and S 2 are independent random variables. S2 ∼ σ2 2 n−1 χn−1 . Fang-I Chu PSTAT 120B Probability and Statistics Hint for #4 (Exercise 7.20) 7.20(b) (b). Using the results of Theorem 7.3, find E (S 2 ) and V (S 2 ) when Y1 , Y2 , . . . , Yn is a random sample from a normal distribution with mean µ and variance σ 2 Hint for (b): 2 1 Pn 2 results of Theorem 7.3: (n−1)S = 2 i=1 (Yi − Ȳ ) has a σ σ2 χ2 distribution with (n − 1)df. Note Ȳ and S 2 are independent random variables. σ2 2 n−1 χn−1 . σ2 E (S 2 ) = n−1 E (χ2n−1 ). S2 ∼ Fang-I Chu PSTAT 120B Probability and Statistics Hint for #4 (Exercise 7.20) 7.20(b) (b). Using the results of Theorem 7.3, find E (S 2 ) and V (S 2 ) when Y1 , Y2 , . . . , Yn is a random sample from a normal distribution with mean µ and variance σ 2 Hint for (b): 2 1 Pn 2 results of Theorem 7.3: (n−1)S = 2 i=1 (Yi − Ȳ ) has a σ σ2 χ2 distribution with (n − 1)df. Note Ȳ and S 2 are independent random variables. σ2 2 n−1 χn−1 . σ2 E (S 2 ) = n−1 E (χ2n−1 ). Obtain E (χ2n−1 ) using result S2 ∼ Fang-I Chu from (a). PSTAT 120B Probability and Statistics Hint for #4 (Exercise 7.20) 7.20(b) (b). Using the results of Theorem 7.3, find E (S 2 ) and V (S 2 ) when Y1 , Y2 , . . . , Yn is a random sample from a normal distribution with mean µ and variance σ 2 Hint for (b): 2 1 Pn 2 results of Theorem 7.3: (n−1)S = 2 i=1 (Yi − Ȳ ) has a σ σ2 χ2 distribution with (n − 1)df. Note Ȳ and S 2 are independent random variables. σ2 2 n−1 χn−1 . σ2 E (S 2 ) = n−1 E (χ2n−1 ). Obtain E (χ2n−1 ) using result σ2 2 Var(S 2 ) = (n−1) 2 Var(χn−1 ). S2 ∼ Fang-I Chu from (a). PSTAT 120B Probability and Statistics Hint for #4 (Exercise 7.20) 7.20(b) (b). Using the results of Theorem 7.3, find E (S 2 ) and V (S 2 ) when Y1 , Y2 , . . . , Yn is a random sample from a normal distribution with mean µ and variance σ 2 Hint for (b): 2 1 Pn 2 results of Theorem 7.3: (n−1)S = 2 i=1 (Yi − Ȳ ) has a σ σ2 χ2 distribution with (n − 1)df. Note Ȳ and S 2 are independent random variables. σ2 2 n−1 χn−1 . σ2 E (S 2 ) = n−1 E (χ2n−1 ). Obtain E (χ2n−1 ) using result σ2 2 Var(S 2 ) = (n−1) 2 Var(χn−1 ). S2 ∼ from (a). Obtain Var(χ2n−1 ) using result from (a). Fang-I Chu PSTAT 120B Probability and Statistics Similar problem (Exercise 7.43) for #5 (Exercise 7.42) 7.43 An anthropologist wishes to estimate the average height of men for a certain race of people. If the population standard deviation is assumed to be 2.5 inches and if she randomly samples 100 men, find the probability that the difference between the sample mean and the true population mean will not exceed 0.5 inch. Solution: Fang-I Chu PSTAT 120B Probability and Statistics Similar problem (Exercise 7.43) for #5 (Exercise 7.42) 7.43 An anthropologist wishes to estimate the average height of men for a certain race of people. If the population standard deviation is assumed to be 2.5 inches and if she randomly samples 100 men, find the probability that the difference between the sample mean and the true population mean will not exceed 0.5 inch. Solution: Known: Fang-I Chu PSTAT 120B Probability and Statistics Similar problem (Exercise 7.43) for #5 (Exercise 7.42) 7.43 An anthropologist wishes to estimate the average height of men for a certain race of people. If the population standard deviation is assumed to be 2.5 inches and if she randomly samples 100 men, find the probability that the difference between the sample mean and the true population mean will not exceed 0.5 inch. Solution: Known: σ = 2.5, n = 100 Fang-I Chu PSTAT 120B Probability and Statistics Similar problem (Exercise 7.43) for #5 (Exercise 7.42) 7.43 An anthropologist wishes to estimate the average height of men for a certain race of people. If the population standard deviation is assumed to be 2.5 inches and if she randomly samples 100 men, find the probability that the difference between the sample mean and the true population mean will not exceed 0.5 inch. Solution: Known: σ = 2.5, n = 100 Goal: find the probability that the difference between sample mean and the true population mean will not exceed 0.5 inch. (Are you able to write out the goal in mathematical expression?): Fang-I Chu PSTAT 120B Probability and Statistics Similar problem (Exercise 7.43) for #5 (Exercise 7.42) 7.43 An anthropologist wishes to estimate the average height of men for a certain race of people. If the population standard deviation is assumed to be 2.5 inches and if she randomly samples 100 men, find the probability that the difference between the sample mean and the true population mean will not exceed 0.5 inch. Solution: Known: σ = 2.5, n = 100 Goal: find the probability that the difference between sample mean and the true population mean will not exceed 0.5 inch. (Are you able to write out the goal in mathematical expression?):Find P(|Ȳ − µ| ≤ 0.5) Fang-I Chu PSTAT 120B Probability and Statistics Similar problem (Exercise 7.43) for #5 (Exercise 7.42) Solution: Fang-I Chu PSTAT 120B Probability and Statistics Similar problem (Exercise 7.43) for #5 (Exercise 7.42) Solution: Step to approach: By the Central Limit Theorem (what is this? review it! ), Fang-I Chu PSTAT 120B Probability and Statistics Similar problem (Exercise 7.43) for #5 (Exercise 7.42) Solution: Step to approach: By the Central Limit Theorem (what is this? review it! ), P(|Ȳ − µ| ≤ 0.5) = P(−0.5 ≤ Ȳ − µ ≤ 0.5) = P( = P( −0.5 σ √ n −0.5 2.5 10 ≤ Ȳ − µ σ √ n ≤Z ≤ ≤ −0.5 2.5 10 0.5 σ √ n ) = P(−2 ≤ Z ≤ 2) = 0.9544 Fang-I Chu PSTAT 120B Probability and Statistics ) Hint for #6 (Exercise 7.54) 7.54 Many bulk products - such as iron, ore, coal, and raw sugar - are sampled for quality by a method that requires many small samples to be taken periodically as the material is moving along a conveyor belt. The small samples are then combined and mixed to form one composite sample. Let Yi denote the volume of ith small sample from a particular lot and suppose that Y1 , Y2 , . . . , Yn constitute a random sample, with each Yi value having mean µ (in cubic inches) and variance σ 2 . The average volume µ of the samples can be set by adjusting the size of the sampling device. Suppose that the variance σ 2 of the volumes of the samples is known to be approximately 4. The total volume of the composite sample must exceed 200 cubic inches with probability approximately 0.95 when n = 50 small samples are selected. Determine a setting for µ that will allow the sampling requirement to be satisfied. Fang-I Chu PSTAT 120B Probability and Statistics Hint for #6 (Exercise 7.54) Hint for #6: Fang-I Chu PSTAT 120B Probability and Statistics Hint for #6 (Exercise 7.54) Hint for #6: Known: Fang-I Chu PSTAT 120B Probability and Statistics Hint for #6 (Exercise 7.54) Hint for #6: Known: σ 2 = 4, n = 50 Fang-I Chu PSTAT 120B Probability and Statistics Hint for #6 (Exercise 7.54) Hint for #6: Known: σ 2 = 4, n = 50 Goal: the probability that the composite sample must exceed 200 cubic inches is approximately 0.95. Find µ satisfy such sampling requirement. (Are you able to write out the goal in mathematical expression?): Fang-I Chu PSTAT 120B Probability and Statistics Hint for #6 (Exercise 7.54) Hint for #6: Known: σ 2 = 4, n = 50 Goal: the probability that the composite sample must exceed 200 cubic inches is approximately 0.95. Find µ satisfy such sampling requirement. (Are you able to write out the goal in mathematical expression?): P(Ȳ > 200) ≈ 0.95 Fang-I Chu PSTAT 120B Probability and Statistics Hint for #6 (Exercise 7.54) Hint for #6: Known: σ 2 = 4, n = 50 Goal: the probability that the composite sample must exceed 200 cubic inches is approximately 0.95. Find µ satisfy such sampling requirement. (Are you able to write out the goal in mathematical expression?): P(Ȳ > 200) ≈ 0.95 Step to approach: Apply the Central Limit Theorem as in Exercise 7.43. Fang-I Chu PSTAT 120B Probability and Statistics