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Title: Math 3680


1
Math 3680 Lecture 13 Hypothesis Testing The
z Test
2
  • The One-Sided z Test

3
  • Example Before a design artist was hired to
    improve its entrance, an average of 3218 people
    entered a department store daily, with an SD of
    287.
  • Since the entrance was redesigned, a simple
    random sample of 42 days has been studied. The
    results are shown on the next slide.

4
  • Is this statistically significant for indicating
    that the average number of people entering the
    store daily has increased?

5
  • Note Dont compare the difference
  • 3392 - 3218 174
  • with the population standard deviation 287.
  • The former applies to an average, while the
    latter is for individual days.

6
There are two possibilities
  • The average number of people entering has not
    changed. The observed sample average of 3,392
    can be reasonably attributed to chance
    fluctuations.
  •  
  • The difference between the observed average and
    the expected average is too large to be simply
    chance. The average number of people entering
    has increased with the improved entrance.

7
  • Definition Null Hypothesis. The first
    hypothesis, which asserts simple chance
    fluctuations, is called the null hypothesis.
  • Definition Alternative Hypothesis. The second
    hypothesis, which asserts that the average has in
    fact increased, is called the alternative
    hypothesis.

8
  • The null hypothesis is the default assumption.
    This is the assumption to be disproved.
  • For example, if the sample average were 3219 per
    day, that would hardly be convincing evidence.
    However, if the new sample average were 5000 per
    day, we can be confident of the lure of the new
    storefront and rule out simple chance. So
    where is the cut-off value?

9
  • Solution.
  • H0 m 3218 (The average number of customers
    entering the store has not changed due to the
    improved storefront)
  • Ha m gt 3218 (The average number of customers
    entering the store has increased due to the
    improved storefront)
  • We choose a 0.05
  • Before continuing, why isnt Ha written as m ?
    3218?

10
  • Assuming H0, we have a sample of 42 days which
    are being drawn from a box with m 3218 and s
    287.
  • The average has the following moments

11
  • Test statistic
  • P-value. Assuming H0, we must find the chance of
    obtaining a test statistic at least this extreme.
    For this problem, that means
  • Conclusion We reject the null hypothesis. There
    is good reason to believe that the average number
    of customers has increased after the redesign.

12
  • Excel Use the command
  • ZTEST(A1D11, 3218, 287)

13
Observations
  • 1. This test of significance is called the
    z-test, named after the test statistic.
  •  
  • 2. The z-test is best used with large samples
    so that the normal approximation may be safely
    made.
  • 3. Notice we have not proven beyond a shadow of
    a doubt that the new storefront was effective in
    increasing the number of patrons.

14
  • 4. The alternative hypothesis is that the daily
    average of patrons is greater than 3218. It is
    not that the new average is exactly equal to
    3392. In other words, the alternative hypothesis
    was a compound hypothesis, not a simple
    hypothesis.
  •  
  • 5. Small values of P are evidence against the
    null hypothesis they indicate that something
    besides chance is at work.
  • 6. We are NOT saying that there is 1 chance in
    20,000 for the null hypothesis to be correct.

15
Another (equivalent) procedure for hypothesis
testing In the previous problem, if the test
statistic was any number greater than 1.645, then
we would have obtained a P-value less than 0.05,
the specified a. (Why?)
We call zc 1.645 the critical value, and the
interval (1.645, ?) is called the rejection
region. Since zs lies in the rejection region,
we choose to reject H0.
5
16
In terms of the customers, we have the critical
value
5
17
Another (equivalent) procedure for hypothesis
testing Hypothesis testing may be correctly
conducted by using the P-value (the first
method) or by using the critical value (as we
just discussed). In scientific articles, both
are usually reported, even though the two methods
are logically equivalent. As we now discuss, the
critical value also eases computation of the
power of the test.
18
Example In the previous example, suppose that
the redesign increased the average number of
patrons by 100, from 3218 to 3318. How likely is
it that a sample of only 42 days will come to the
correct conclusion (by rejecting the null
hypothesis)? Note Recall that this is called
the power of the test.
19
Solution recall the critical value xc 3290.8
P( Reject H0 m 3318)
20
Alternative distribution
Null distribution
73.05
5
21
Power of the test (1-ß) as a function of the true
average
22
  • Example The average braking distance from 60
    mph of a Mercury Sable is 159 feet, with an SD of
    23.5 feet. Sables equipped with (hopefully)
    improved tires have just undergone early testing
    the results of the first 45 tests are shown
    below. Does this indicate that the new tires
    have decreased the braking distance? Use a
    0.05.

23
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24
  • Example The Compute the probability b of
    committing a Type II error if the braking
    distance with the improved tires is now 155 feet.

25
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26
Conceptual Questions
  • 1) We made a test of significance because
    (choose one)
  • i) We knew what was in the box, but did not know
    how the sample would turn out or
  • ii) We knew how the sample turned out, but did
    not know what was in the box.

27
Conceptual Questions
  • 2) The null hypothesis says that the average of
    the (sample / box) is 159 feet.

28
Conceptual Questions
  • 3) True or False
  • a) The observed significance level of 8 depends
    on the data (i.e. sample)
  • b) There are 92 chances out of 100 for the
    alternative hypothesis to be correct.

29
Conceptual Questions
  • 4) Suppose only 10 tests were performed instead
    of 45. Should we use the normal curve to compute
    P?

30
Conceptual Questions
  • 5) True or False
  •  
  • a) A highly statistically significant result
    cannot possibly be due to chance.
  • b) If a sample difference is highly
    statistically significant, there is less than a
    1 chance for the null hypothesis to be correct.

31
Conceptual Questions
  • 6) True or False
  •  
  • a) If , then the null hypothesis
    looks plausible.
  • b) If , then the null hypothesis
    looks implausible.



43
P


.
43
0
P
32
  • The Two-Sided z Test

33
  • Example A company claims to have designed a new
    fishing line that has a mean breaking strength of
    8 kg with an SD of 0.5 kg. Consumer Reports tests
    a random sample of 45 lines the results are
    shown below. Test the validity of the companys
    claim.

34

35
  • Notes
  • To avoid data snooping, we must use a two-tailed
    test. Before the tests were actually performed,
    we had no a priori reason to think that the
    sample average would return either too high or
    too low.
  • For a two-sided alternative hypothesis, the
    P-value is twice as large as for a one-sided
    alternative.

36
Example. Lets take a look at the results of the
Salk vaccine trial, which we first saw back in
Lecture 2 Does it appear that the vaccine
was effective? Note If the vaccine was
ineffective, then we would expect the 199 polio
cases to be distributed with p 200745/401974
0.499398, and the 57 polio cases among the
treated was just due to a run of luck.
 
 
 
 
 
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