In: Statistics and Probability
A tire manufacturer produces tires that have a mean life of at least 25000 miles when the production process is working properly. The operations manager stops the production process if there is evidence that the mean tire life is below 25000 miles.
The testable hypotheses in this situation are ?0:?=25000H0:μ=25000 vs ??:?<25000HA:μ<25000.
1. Identify the consequences of making a Type I error.
A. The manager does not stop production when it is
not necessary.
B. The manager stops production when it is
necessary.
C. The manager stops production when it is not
necessary.
D. The manager does not stop production when it is
necessary.
2. Identify the consequences of making a Type II error.
A. The manager does not stop production when it is
not necessary.
B. The manager does not stop production when it is
necessary.
C. The manager stops production when it is
necessary.
D. The manager stops production when it is not
necessary.
To monitor the production process, the operations manager takes a random sample of 30 tires each week and subjects them to destructive testing. They calculate the mean life of the tires in the sample, and if it is less than 24000, they will stop production and recalibrate the machines. They know based on past experience that the standard deviation of the tire life is 3250 miles.
3. What is the probability that the manager will make a Type I error using this decision rule? Round your answer to four decimal places.
4. Using this decision rule, what is the power of the test if the actual mean life of the tires is 23750 miles? That is, what is the probability they will reject ?0H0 when the actual average life of the tires is 23750 miles? Round your answer to four decimal places.
1)
C. The manager stops production when it is not necessary.
2)
B. The manager does not stop production when it is necessary.
3)
for normal distribution z score =(X-μ)/σ | |
here mean= μ= | 25000 |
std deviation =σ= | 3250.000 |
sample size =n= | 30 |
std error=σx̅=σ/√n= | 593.36610 |
probability =P(X<24000)=(Z<(24000-25000)/593.366)=P(Z<-1.69)=0.0455 |
(please try 0.0460 if this comes wrong)
4)
probability =P(X<24000)=(Z<(24000-23750)/593.366)=P(Z<0.42)=0.6628 |
(please try 0.6632 if this comes wrong)