In: Statistics and Probability
Explain hypothesis testing to a friend, using the following scenario as a model. Describe the hypotheses, the sample statistic, the P-value, the meanings of Type I and Type II errors, and the level of significance. Discuss the significance of the results. Formulas are not required.
A team of research doctors designed a new knee surgery technique utilizing much smaller incisions than the standard method. They believe recovery times are shorter when the new method is used. Under the old method, the average recovery time for full use of the knee is μ1 = 4.5 months. A random sample of 39 surgeries using the new method showed the average recovery time to be μ2 = 3.7 months, with sample standard deviation of 1.8 months. The P-value for the test is 0.0043. The research team states that the results are statistically significant at the 1% level of significance.
Describe the hypotheses.
Null hypothesis: the average recovery times are the
same; Alternate hypothesis: the average recovery time for the new
method is greater than the average recovery time for the old
methodNull hypothesis: the average recovery times are the same;
Alternate hypothesis: the average recovery time for the new method
is less than the average recovery time for the old
method Null hypothesis: the average recovery
times are the same; Alternate hypothesis: the average recovery time
for the new method is not the same as the average recovery time for
the old methodNull hypothesis: the average recovery time for the
new method is less than the average recovery time for the old
method; Alternate hypothesis: the average recovery times are the
same
What does the P-value mean?
It is the probability that the population could have a
sample like this again.It is the probability that the sample has
that mean. It is the probability that the
population actually has that mean.It is the probability that a
sample could be gathered from the population with the given
characteristics.
What is the meaning of a Type I error?
Accept the hypothesis that the average recovery times
are the same when in fact this is true.Accept the hypothesis that
the average recovery times are the same when in fact this is
false. Reject the hypothesis that the
average recovery times are different when in fact this is
true.Reject the hypothesis that the average recovery times are
different when in fact this is false.
What is the meaning of a Type II error?
Accept the hypothesis that the average recovery times
are the same when in fact this is true.Accept the hypothesis that
the average recovery times are the same when in fact this is
false. Reject the hypothesis that the
average recovery times are different when in fact this is
true.Reject the hypothesis that the average recovery times are
different when in fact this is false.
What does it mean to be statistically significant at the 1% level of significance?
That the P-value is greater than the 1% level
that we are testing it against, allowing us to reject the null
hypothesis.That the P-value is less than the 1% level that
we are testing it against, allowing us to accept the alternate
hypothesis. That the P-value is less
than the 1% level that we are testing it against, allowing us to
fail to reject the null hypothesis.That the P-value is
greater than the 1% level that we are testing it against, allowing
us to fail to reject the null hypothesis.That the P-value is
less than the 1% level that we are testing it against, allowing us
to reject the null hypothesis.