AP Statistics 2017

(Marvins-Underground-K-12) #1
Since   we  do  not know    σ   ,   but do  have    a   large   sample  size,   we  will    use a   t procedure.    
, df = 100 – 1. Using df = 80 from Table B (rounding down from 99), we have

0.05    <   P   -value  <   0.10.   Using   a   TI-83/84    with    df  =   99, the P   -value  =
tcdf(-100,-1.45,99)=0.075.



  1.          The 99% confidence  interval    will    be  more    likely  to  contain the population  value   being   estimated,  but

    will be wider than a 95% confidence interval.



  2. I. (a) We are 95% confident that the true difference between the mean age of male statistics
    teachers and female statistics teachers is between –4.5 years and 3.2 years.
    (b) Since 0 is contained in this interval, we do not have evidence of a statistically significant
    difference between the mean ages of male and female statistics teachers.
    II. (a) We are 95% confident that the true difference between the mean age of male statistics
    teachers and female statistics teachers is between 2.1 years and 3.9 years.
    (b) Since 0 is not in this interval, we do have evidence of a real difference between the mean
    ages of male and female statistics teachers. In fact, since the interval contains only positive
    values, we have evidence that the mean age of male statistics teachers is greater than the
    mean age of female statistics teachers.
    III. (a) We are 95% confident that the true difference between the mean age of male statistics
    teachers and female statistics teachers is between –5.2 years and –1.7 years.
    (b) Since 0 is not in this interval, we have evidence of a real difference between the mean
    ages of male and female statistics teachers. In fact, since the interval contains only negative
    values, we have evidence that the mean age of male statistics teachers is less than the mean
    age of female statistics teachers.

  3. t procedures are appropriate because the population is approximately normal. n = 20 df = 20 – 1
    = 19 t * = 2.861 for C = 0.99.

  4. (a) A Type I error is made when we mistakenly reject a true null hypothesis. In this situation, that
    means that we would mistakenly reject the true hypothesis that the available housing is sufficient.
    The risk would be that a lot of money would be spent on building additional housing when it
    wasn’t necessary.
    (b) A Type II error is made when we mistakenly fail to reject a false hypothesis. In this situation that
    means we would fail to reject the false hypothesis that the available housing is sufficient. The
    risk is that the university would have insufficient housing for its students.

Free download pdf