MATH HOME WORK 3
The weights of steers in a herd are distributed normally. The variance is 40,000 and the mean steer weight is 1300 lbs. Find the probability that the weight of a randomly selected steer is greater than 979 lbs. (Round your answer to 4 decimal places)xbar <- 1300
sigma2 <- 40000
round(1 - pnorm(979, mean = xbar, sd = sqrt(sigma2)), 4)
## [1] 0.9458
The probability that the weight of a randomly selected steer is greater than 979 lbs is 0.9458.
SVGA monitors manufactured by TSI Electronics have life spans that have a normal distribution with a variance of 1,960,000 and a mean life span of 11,000 hours. If a SVGA monitor is selected at random, find the probability that the life span of the monitor will be more than 8340 hours. (Round your answer to 4 decimal places)xbar <- 11000
sigma2 <- 1960000
round(1 - pnorm(8340, mean = xbar, sd = sqrt(sigma2)), 4)
## [1] 0.9713
The probability that the life span of the monitor will be more than 8340 hours is 0.9713.
Suppose the mean income of firms in the industry for a year is 80 million dollars with a standard deviation of 3 million dollars. If incomes for the industry are distributed normally, what is the probability that a randomly selected firm will earn between 83 and 85 million dollars? (Round your answer to 4 decimal places)xbar <- 80
std <- 3
round(pnorm(85, mean = xbar, sd = std) - pnorm(83, mean = xbar, sd = std), 4)
## [1] 0.1109
The probability that a randomly selected firm will earn between 83 and 85 million dollars is 0.1109.
Suppose GRE Verbal scores are normally distributed with a mean of 456 and a standard deviation of 123. A university plans to offer tutoring jobs to students whose scores are in the top 14%. What is the minimum score required for the job offer? Round your answer to the nearest whole number, if necessary.qnorm(0.14, 456, 123, lower.tail = FALSE)
## [1] 588.8793
The minimum score required for the job offer is 588.8793.
The lengths of nails produced in a factory are normally distributed with a mean of 6.13 centimeters and a standard deviation of 0.06 centimeters. Find the two lengths that separate the top 7% and the bottom 7%. These lengths could serve as limits used to identify which nails should be rejected. Round your answer to the nearest hundredth, if necessary.round(qnorm(0.7, 6.13, 0.06, lower.tail = FALSE), 2)
## [1] 6.1
round(qnorm(0.7, 6.13, 0.06, lower.tail = TRUE), 2)
## [1] 6.16
The two lengths that separate the top 7% and the bottom 7% are 6.1 and 6.16.
An English professor assigns letter grades on a test according to the following scheme.
A: Top 13% of scores B: Scores below the top 13% and above the bottom 55% C: Scores below the top 45% and above the bottom 20% D: Scores below the top 80% and above the bottom 9% F: Bottom 9% of scores Scores on the test are normally distributed with a mean of 78.8 and a standard deviation of 9.8. Find the numerical limits for a C grade. Round your answers to the nearest whole number, if necessary.round(qnorm(0.55, mean = 78.8, sd = 9.8), 4)
## [1] 80.0315
round(qnorm(0.20, mean = 78.8, sd = 9.8), 4)
## [1] 70.5521
The numerical limits for a C grade are 80.0315 and 70.5521
Suppose ACT Composite scores are normally distributed with a mean of 21.2 and a standard deviation of 5.4. A university plans to admit students whose scores are in the top 45%. What is the minimum score required for admission? Round your answer to the nearest tenth, if necessary.round(qnorm(0.45, mean = 21.2, sd = 5.4, lower.tail = FALSE), 4)
## [1] 21.8786
The minimum score required for admission is 21.8786.
Consider the probability that less than 11 out of 151 students will not graduate on time. Assume the probability that a given student will not graduate on time is 9%. Approximate the probability using the normal distribution. (Round your answer to 4 decimal places.)res <- pbinom(10, 151, 0.09)
round(res, 4)
## [1] 0.192
The probabiljity is 0.192.
The mean lifetime of a tire is 48 months with a standard deviation of 7. If 147 tires are sampled, what is the probability that the mean of the sample would be greater than 48.83 months? (Round your answer to 4 decimal places)compmean <- 48
std <- 7
sample.size <- 147
stderr <- std/sqrt(sample.size)
res <-1 - pnorm(48.83, compmean, stderr)
round(res, 4)
## [1] 0.0753
the probability that the mean of the sample would be greater than 48.83 months is 0.0753.
compmean <- 91
std <- 10
sample.size <- 68
stderr <- std/sqrt(sample.size)
res <-1 - pnorm(93.54, compmean, stderr)
round(res, 4)
## [1] 0.0181
The probability that the mean of a sample of 68 computers would be greater than 93.54 months is 0.0181.
p <- 0.07
n <- 540
sp <- 0.03
diffp1 <- p - sp
diffp2 <- p + sp
stderr <- sqrt(p*(1-p)/n)
upper <- pnorm(diffp2, p,stderr)
lower <- pnorm(diffp1, p,stderr)
round(upper - lower, 4)
## [1] 0.9937
The probability is 0.9937.
p <- 0.23
n <- 602
sp <- 0.04
diffp1 <- p - sp
diffp2 <- p + sp
stderr <- sqrt(p*(1-p)/n)
upper <- 1 - pnorm(diffp2, p,stderr)
lower <- pnorm(diffp1, p,stderr)
round(upper + lower, 4)
## [1] 0.0197
The probability is 0.0197.
N <- 208
std <- 0.8
smean <- 3.9
ci <- 1.28
round(smean - ci * std/sqrt(N), 3)
## [1] 3.829
round(smean + ci * std/sqrt(N), 3)
## [1] 3.971
The 80% confidence interval for the mean number of lb. of beef per week among males over 48 is (3.829,3.971 )
N <- 7472
std <- 11
smean <- 16.7
round(smean - 2.33 * std/sqrt(N), 3)
## [1] 16.403
round(smean + 2.33 * std/sqrt(N), 3)
## [1] 16.997
98% confidence interval for the mean per capita income is (16.403, 16.997).
Step 1. Choose the picture which best describes the problem. The second picture best describes the problem.
Step 2. Write your answer below.
qt(0.05, 26)
## [1] -1.705618
The answer is -1.705618.
Step 1. Calculate the sample mean for the given sample data. (Round answer to 2 decimal places)
x <- c(383.6, 347.1, 371.9, 347.6, 325.8, 337)
round(mean(x) , 2)
## [1] 352.17
The sample mean is 352.17. Step 2. Calculate the sample standard deviation for the given sample data. (Round answer to 2 decimal places)
round(sd(x) , 2)
## [1] 21.68
21.68 is the sample standard deviation. Step 3. Find the critical value that should be used in constructing the confidence interval. (Round answer to 3 decimal places)
21.68/sqrt(6)
## [1] 8.850823
The critical value is 8.850823. Step 4. Construct the 90% confidence interval. (Round answer to 2 decimal places)
round(352.17 + 1.64*8.850823, 2)
## [1] 366.69
round(352.17 - 1.64*8.850823, 2)
## [1] 337.65
The 90% confidence interval is (366.69, 337.65)
Step 1. Find the critical value that should be used in constructing the confidence interval. (Round answer to 3 decimal places)
cv <- 2.56/sqrt(16)
round(cv,3)
## [1] 0.64
Step 2. Construct the 80% confidence interval. (Round answer to 1 decimal place)
round(46.4 + 1.28 * cv, 1)
## [1] 47.2
round(46.4 - 1.28 * cv, 1)
## [1] 45.6
Tthe 80% confidence interval is 45.6. and 47.2
sigma <- 1.9
me <- 0.13
ss <- ((2.58* sigma)/ (me))^2
floor(ss)
## [1] 1421
Estimated sample size is 1421.
sigma <- sqrt(3.61)
me <- 0.19
ss <- ((1.96* sigma)/ (me))^2
floor(ss)
## [1] 384
The estimated sample size is 384.
Step 1. Suppose a sample of 2089 tenth graders is drawn. Of the students sampled, 1734 read above the eighth grade level. Using the data, estimate the proportion of tenth graders reading at or below the eighth grade level. (Write your answer as a fraction or a decimal number rounded to 3 decimal places)
N <- 2089
x <- 1734
below8 <- N-x
phat <- round(below8/N,3)
phat
## [1] 0.17
The proportion of above below eighth grade is 0.17. Step 2. Suppose a sample of 2089 tenth graders is drawn. Of the students sampled, 1734 read above the eighth grade level. Using the data, construct the 98% confidence interval for the population proportion of tenth graders reading at or below the eighth grade level. (Round your answers to 3 decimal places)
round(phat - 2.33 * sqrt((phat*(1-phat))/N)
, 3)
## [1] 0.151
round(phat + 2.33 * sqrt((phat*(1-phat))/N),3)
## [1] 0.189
98% confidence interval for below 8th grade is (0.151, 0.189)
Step 1. Suppose a sample of 474 tankers is drawn. Of these ships, 156 had spills. Using the data, estimate the proportion of oil tankers that had spills. (Write your answer as a fraction or a decimal number rounded to 3 decimal places)
N <- 474
spills <- 156
phat <- round(spills/N,3)
phat
## [1] 0.329
32.911 of oil tankers that had spills.
Step 2. Suppose a sample of 474 tankers is drawn. Of these ships, 156 had spills. Using the data, construct the 95% confidence interval for the population proportion of oil tankers that have spills each month. (Round your answers to 3 decimal places)
round(phat - 1.96 * sqrt((phat*(1-phat))/N)
, 3)
## [1] 0.287
round(phat + 1.96 * sqrt((phat*(1-phat))/N),3)
## [1] 0.371
95% confidence interval is (0.287,0.371)