Data Analysis with Microsoft Excel: Updated for Office 2007

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Chapter 6 Statistical Inference 239

Under a one-tailed test, we reject the null hypothesis. Of course, we have
to be very careful with this approach, because we are changing our hypoth-
esis after seeing the data. If this were an actual situation, changing the hy-
pothesis like this would be inappropriate. The better course would be to
draw another random sample of 25 batches and test the new hypothesis on
that set of data (and only if we have compelling reasons for doing a one-
tailed test).
Try other combinations of hypothesis and parameter values to see how
they affect the hypothesis test. Close the workbook when you’re fi nished.
You do not have to save your changes.

Additional Thoughts about Hypothesis Testing


One important point you should keep in mind when hypothesis testing is
that accepting the null hypothesis does not mean that the null hypothesis is
true. Rather, you are stating that there is insuffi cient reason to reject it. The
distinction is subtle but important. To state that accepting the null hypoth-
esis means that m 5 50 excludes the possibility that m actually equals 49 or
49.9 or 49.99. But you didn’t test any of these possibilities. What you did
test was whether the data are incompatible with the assumption that m 5 50.
You found that in some cases, they are not compatible.

Figure 6-9
Switching
from a
two-tailed
to a
one-tailed
test

one-tailed rejection
region
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