Stats Chapter 9
the null hypothesis is specified by using one of the following signs:
=, <=, >=
a Type II error occurs when we:
Do not reject the null hypothesis when it is actually false
in hypothesis testing, two incorrect decisions are possible:
Not rejecting the null hypothesis when it is false, and Rejecting the null hypothesis when it is true
a Type I error occurs when we:
Reject the null hypothesis when it is actually true
True of False: in a two-tailed test, we can reject the null hypothesis on either side of the hypothesized value of the population parameter
True
True or False: the optimal values of Type I and Type II errors require a compromise in balancing the costs of each type of error
True
Ha
alternative hypothesis
what is NOT a step we use when formulating the null and alternative hypotheses?
calculate the value of the sample statistic
an alternative hypothesis...
contradicts the status quo
we can generally reduce Type I and Type II errors by:
increasing the sample size
if we reject the null hypothesis when it is actually false, we have committed:
no error
Ho
null hypothesis
the expected value of the sampling distribution of P_ is the:
population proportion
unlike the mean and standard deviation, the population proportion p is a descriptive summary measure that can be used for data that is:
qualitative
suppose the competing hypothesis..... 30
reject Ho and conclude.. .20 at 10%
in hypothesis testing, if the sample data provides significant evidence that the null hypothesis is incorrect, then we:
reject the null hypothesis
if the population standard deviation is unknown, it can be estimated by using:
s
In inferential statistics, we use _____ information to make inferences about an unknown _____ parameter
sample, population
a (alpha)
the probability of committing a Type I error
b (beta)
the probability of committing a Type II error
as a point estimate of the population proportion, we calculate:
p_