ACTIVITY
Some quality control experiments require destructive
sampling
(i.e., the test to determine whether the item is defective destroys
the
item) in order to measure some particular characteristics of the
product. The
cost of desctructive sampling often dictates small samples. Suppose a
manufacturer
of printers for personal computers wishes to estimate the mean number of
characters
printed before the printhead fails. The printer manufacturer tests
n
= 15 printheads and records the number of characters printed until
failure for
each. Suppose that the competitor's printers has a mean of 1.30 (in
millions)
for the number of characters printed before the printhead fails.These 15
measurements
(in millions of characters) are listed in the following table. Suppose
that
the competitor's printers has a mean of 1.30 (in millions) for the
number of
characters printed before the printhead fails
Number of Characters (in Millions) for n = 15
Printhead
Tests
|
1.33 |
1.55 |
1.43 |
0.92 |
1.25 |
1.36 |
1.32 |
0.85 |
1.07 |
1.48 |
1.20 |
1.33 |
1.18 |
1.22 |
1.29 |
a. Test the hypothesis that mean number of
characters printed
before the printhead fails for this manufacturer is different than its
competitor.
Use the significance level 0.05.
- Step 1: Make sure that "Input"
menu option is selected.
- Step 2: Double click on "Col_1"
and replace it with "Number".
- Step 3: Enter
the data.
- Step
4: Click
on the right arrow at the upper
right
corner until you see "Rank
test".
- Step 5: Select the "Rank
test"
from menu options.Caution: Do not use the
output
yet.
- Step 6: Click
on the "Options"
button on the upper right hand side of the
window.
- Step 7: On
the
window that pops up, type the value of the mean specified in you null
hypothesis.
That is 1.3 in this
case.
- Step 8: Select
your alternative hypothesis. For this question the alternative
hypothesis
is two sided (we are interested whether the mean is different or
not). Therefore
select "Not
equal".
- Step 9: Type the significance level of the test. In this case
it
is "5.0"
- Step 10: Click
on the "OK" button.
The output will include: Sample size, Median, and the results of signed
test
and signed rank test.
b. Test the hypothesis that mean number of characters printed
before
the printhead fails for this manufacturer is less than its
competitor. Use the
significance level 0.05.
- Step 1: Make sure that "Input"
menu option is selected.
- Step 2: Click on "Col_1"
and replace it with "Number".
- Step 3: Enter
the data.
- Step 4: Click on the right
arrow at the upper right corner until you see "Rank
test".
- Step 5: Select the "Rank
test"
from menu options.Caution: Do not use the
output
yet.
- Step 6: Click
on the "Options"
button on the upper right hand side of the
window.
- Step 7: On
the
window that pops up, type the value of the mean specified in you null
hypothesis.
That is 1.3 in this
case.
- Step 8: Select
your alternative hypothesis. For this question the alternative
hypothesis
is one sided (we are interested whether the mean is less). Therefore
select
"Less than".
- Step 9: Type the significance level of the test. In this case
it
is "5.0"
- Step 10: Click
on the "OK" button.
The output will include: Sample size, Median, and the results of signed
test
and signed rank test
c. The manufacturer advertises that mean number of characters
printed
before the printhead fails for their printer is 1.4 (in million). What
would
be your response?
- Step 1: Make sure that "Input"
menu option is selected.
- Step 2: Click on "Col_1"
and replace it with "Number".
- Step 3: Enter
the data.
- Step 4: Click on the right
arrow at the upper right corner until you see "Rank
test".
- Step 5: Select the "Rank
test"
from menu options.Caution: Do not use the
output
yet.
- Step 6: Click
on the "Options"
button on the upper right hand side of the
window.
- Step 7: On
the
window that pops up, type the value of the mean specified in you null
hypothesis.
That is 1.4 in this
case.
- Step 8: Select
your alternative hypothesis. For this question the alternative
hypothesis
is one sided (we are interested whether the mean is less). Therefore
select
"Less than".
- Step 9: Type the significance level of the test. In this case
it
is "5.0"
- Step 10: Click
on the "OK" button.
Note the p-value of this test and respond to the question.