Ch. 9 QMB
Which of the following describes a Type II Error?
Accept H0 when H0 is false.
A student wants to determine if pennies are really fair, meaning equally likely to land heads up or tails up. He flips a random sample of 50 pennies and finds that 28 of them land heads up. What are the appropriate null and alternative hypotheses?
Ho:p=.5, Ha:p≠.5 (28/50=.5)
Which of the following null hypotheses cannot be correct?
Ho:p≠10
Which of the following describes a Type I Error?
Reject H0 when H0 is true.
Which of the following does not need to be known in order to compute the p-value?
The level of significance
What is the probability of making a Type I error?
a
For a lower tail test, the p-value is the probability of obtaining a value for the test statistic:
at least as small as that provided by the sample.
As the test statistic becomes larger, the p-value:
becomes smaller.
Whenever the probability of making a Type II error has not been determined and controlled, only two conclusions are possible. We either reject H0 or:
do not reject H0.
The probability of making a Type I error when the null hypothesis is true as an equality is called the:
level of significance.
The p-value:
must be a number between 0 and 1.
For the case where σ is unknown, the test statistic has a t distribution. How many degrees of freedom does it have?
n - 1
The p-value is a probability that measures the support (or lack of support) for the:
null hypothesis.
For the case where σ is unknown, which statistic is used to estimate σ?
s
Applications of hypothesis testing that only control for the Type I error are called:
significance tests.
In hypothesis testing, the tentative assumption about the population parameter is called:
the null hypothesis.
For a two-tailed test, the p-value is the probability of obtaining a value for the test statistic as:
unlikely as that provided by the sample.