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One Sample Hypothesis Tests 
z-Test and t-Test
H0 : μ after treatment = μ before treatment 
HA : μ after treatment  μ before treatment
The problem 
• A researcher is testing the effectiveness of a new 
herbal supplement that claims to improve physical 
fitness. A sample of n = 25 college students is obtained 
and each student takes the supplement daily for six 
weeks. At the end of the 6-week period, each student 
is given the Marine Physical Fitness Test and the 
average score for the sample is M = 38.68. For the 
general population of college students, the distribution 
of scores on the Marine Physical Fitness test is normal 
with a mean of μ = 35 and a standard deviation of 
σ = 10. Do students taking the supplement have 
significantly better fitness scores? 
Use a two-tailed test with α = .05.
Gather information from the problem 
in an organized way as you read. 
• n = 25 college students 
• M = 38.68 
• μ = 35 
•  = 10 
• Compute the Standard Error 
M = 10/25 = 10/5 = 2
Step 1: State the Hypotheses 
• Write the Null and Alternate Hypotheses 
as sentences
Step 1: State the Hypotheses 
• College students who take the herbal supplement 
will have the same average score on the Marine 
Physical Fitness Test as the general population of 
students, or 35 points. 
• College students who take the herbal supplement 
will have a different average Marine Physical 
Fitness score than the general population of 
students. 
• Two-tailed: “different average...score” 
• One-tailed: “higher average…” or “lower average”
Step 1: State the Hypotheses 
• Write the Null and Alternate Hypotheses 
as equations
State the Hypotheses as Equations 
• H0: M – μ = 0 or H0: M = 35 
• HA: M – μ  0 or HA: M  35 
• For a one-tailed test, you would need < and > 
signs that, taken together, cover all possibilities 
• H0: M – μ  0 
• HA: M – μ > 0
Step Two: Locate the critical region 
Step Two: Locate the critical region on the graph to match the 
requirements stated in the problem. Be sure to write in the Critical 
Value of the test statistic, and shade in the critical region.
Step Two: Locate the critical region 
Step Two: Locate the critical region on the graph to match the 
requirements stated in the problem. Be sure to write in the Critical 
Value of the test statistic, and shade in the critical region.
Step Three: Compute the z test 
statistic for this problem. 
• 
• 
• 
Use the numbers you 
collected or computed 
while reading problem 
• n = 25 students 
• M = 38.68 
• μ = 35 
•  = 10 
• Standard Error 
M = 10/25 = 2 
 
m 
M 
z 
 
 
38.68  35 
2 
z  
1.84 
3.68 
z   
2
Step Four: Make a decision 
Reject H0 if z is in the rejection region 
(i.e., if z > 1.96 or z < -1.96) 
Otherwise, retain H0 
z = 1.84 
X
Recipe for writing up test results 
• Sandwich: narrative outside, statistics inside 
• Opening sentence that states the experiment’s 
question and hypothesis. 
• Sentence(s) that include 
the descriptive statistics 
(means, standard deviations) 
• Statement of your decision: 
results are significant (reject H0) or not significant 
(retain H0) including test statistic and alpha-level 
• Closing sentence(s) that answer the question
Write up the results in a narrative 
A researcher was interested to find out whether an herbal 
supplement had an impact on physical fitness as measured by the 
Marine Physical Fitness Test. The average level of physical fitness 
(M = 38.68) of 25 college students who took the herbal supplement 
in the study was tested. This mean was found to be 
(choose the appropriate one of the following options) 
SIGNIFICANTLY HIGHER / NOT SIGNIFICANTLY DIFFERENT / SIGNIFICANTLY LOWER 
than the national college student mean of μ = 35 
(put test results in parentheses) ( z = 1.84, p > .05) . 
[Write closing narrative sentence to summarize the findings] 
There is not enough evidence in this sample to conclude that taking 
the herbal supplement has any effect on general fitness level; the 
higher average fitness score for this small sample of students might 
have due to chance.
WHEN WE DO NOT KNOW THE 
POPULATION STANDARD DEVIATION: 
T-TESTS
H0 : μ after treatment = μ before treatment 
HA : μ after treatment  μ before treatment
 Use s2 to estimate σ2 
 Estimated standard error: 
s 
2 
n 
or 
s 
n 
sm  
 Estimated standard error is used as 
estimate of the real standard error when 
the value of σm is unknown.
 The t-statistic uses the estimated standard 
error in place of σm 
M 
 
m s 
t 
 
 The t statistic is used to test hypotheses 
about a hypothesized (unknown) or known 
population mean μ when the value of σ 
is unknown
 Family of distributions, one for each value of 
degrees of freedom. 
 Approximates the shape of the normal 
distribution 
• Flatter than the normal distribution 
• More spread out than the normal distribution 
• More variability (“fatter tails”) in t distribution 
 Use t values instead of Normal Curve Values
 To compute the standard deviation 
(variance) we computed the mean first. 
• Only n-1 scores in a sample are independent 
• Researchers call n-1 the degrees of freedom 
 Degrees of freedom 
• Noted as df 
• df = n-1 for a one-sample test
1. State the null and alternative hypotheses 
2. Select an alpha level 
Locate the critical region using the 
t distribution and df 
3. Calculate the t test statistic 
4. Make a decision regarding H0
df = 24 
-2.064 2.064
z-test 
 One sample 
 Population mean μ is 
known or hypothesized 
 Population standard 
deviation σ is known 
t-test 
 One sample 
 Population mean μ is 
known or hypothesized 
 Population standard 
deviation σ is NOT known 
  
n n 
m 
2 
or 
  
 
m 
M 
z 
 
 
s 
n 
or 
2 
s 
n 
sm  
,  1 
 
M 
 df n 
s 
t 
m 

 Also: Cronk 6.2 and Atomic Learning videos
 Select variable 
 Enter test value 
 Click OK
Rejection region defined by 
alpha is colored in. 
In this test, p-value is less area than the rejection region, so 
we would reject H0 because the probability of getting a 
result this extreme or more is less than 
Computing by hand 
 Find the limits of the 
rejection region from a 
table or calculator for t 
 If the t-statistic you 
compute is more extreme 
(larger in magnitude), then 
REJECT H0 
 Otherwise, RETAIN H0 
Computing with SPSS 
 Use the alpha level (often 
.05) for comparison. 
 If the p-value that SPSS 
computes is less than the 
alpha, REJECT H0 
 Otherwise, retain H0.
A researcher was interested to find out whether an herbal 
supplement had an impact on physical fitness as measured by the 
Marine Physical Fitness Test. The average level of physical fitness 
(M = 38.68, s = 9.017) of 25 college students who took the herbal 
supplement in the study was tested. This mean was found to be 
(choose the appropriate one of the following options) 
SIGNIFICANTLY HIGHER / NOT SIGNIFICANTLY DIFFERENT / SIGNIFICANTLY LOWER 
than the national college student mean of μ = 35 
(put test results in parentheses) ( t = 2.041, p = .052) . 
[Write closing narrative sentence to summarize the findings] 
There is not enough evidence in this sample to conclude that taking 
the herbal supplement has any effect on general fitness level; the 
higher average fitness score for this small sample of students might 
have due to chance.
 Try the analysis again with Sample 2. 
 How are the results the same or different? 
 How would we handle writing up the 
different results? 
[Hint: Cronk has two types of write-up in each 
section of his book]

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One-Sample Hypothesis Tests

  • 1. One Sample Hypothesis Tests z-Test and t-Test
  • 2. H0 : μ after treatment = μ before treatment HA : μ after treatment  μ before treatment
  • 3. The problem • A researcher is testing the effectiveness of a new herbal supplement that claims to improve physical fitness. A sample of n = 25 college students is obtained and each student takes the supplement daily for six weeks. At the end of the 6-week period, each student is given the Marine Physical Fitness Test and the average score for the sample is M = 38.68. For the general population of college students, the distribution of scores on the Marine Physical Fitness test is normal with a mean of μ = 35 and a standard deviation of σ = 10. Do students taking the supplement have significantly better fitness scores? Use a two-tailed test with α = .05.
  • 4. Gather information from the problem in an organized way as you read. • n = 25 college students • M = 38.68 • μ = 35 •  = 10 • Compute the Standard Error M = 10/25 = 10/5 = 2
  • 5. Step 1: State the Hypotheses • Write the Null and Alternate Hypotheses as sentences
  • 6. Step 1: State the Hypotheses • College students who take the herbal supplement will have the same average score on the Marine Physical Fitness Test as the general population of students, or 35 points. • College students who take the herbal supplement will have a different average Marine Physical Fitness score than the general population of students. • Two-tailed: “different average...score” • One-tailed: “higher average…” or “lower average”
  • 7. Step 1: State the Hypotheses • Write the Null and Alternate Hypotheses as equations
  • 8. State the Hypotheses as Equations • H0: M – μ = 0 or H0: M = 35 • HA: M – μ  0 or HA: M  35 • For a one-tailed test, you would need < and > signs that, taken together, cover all possibilities • H0: M – μ  0 • HA: M – μ > 0
  • 9. Step Two: Locate the critical region Step Two: Locate the critical region on the graph to match the requirements stated in the problem. Be sure to write in the Critical Value of the test statistic, and shade in the critical region.
  • 10. Step Two: Locate the critical region Step Two: Locate the critical region on the graph to match the requirements stated in the problem. Be sure to write in the Critical Value of the test statistic, and shade in the critical region.
  • 11. Step Three: Compute the z test statistic for this problem. • • • Use the numbers you collected or computed while reading problem • n = 25 students • M = 38.68 • μ = 35 •  = 10 • Standard Error M = 10/25 = 2  m M z   38.68  35 2 z  1.84 3.68 z   2
  • 12. Step Four: Make a decision Reject H0 if z is in the rejection region (i.e., if z > 1.96 or z < -1.96) Otherwise, retain H0 z = 1.84 X
  • 13. Recipe for writing up test results • Sandwich: narrative outside, statistics inside • Opening sentence that states the experiment’s question and hypothesis. • Sentence(s) that include the descriptive statistics (means, standard deviations) • Statement of your decision: results are significant (reject H0) or not significant (retain H0) including test statistic and alpha-level • Closing sentence(s) that answer the question
  • 14. Write up the results in a narrative A researcher was interested to find out whether an herbal supplement had an impact on physical fitness as measured by the Marine Physical Fitness Test. The average level of physical fitness (M = 38.68) of 25 college students who took the herbal supplement in the study was tested. This mean was found to be (choose the appropriate one of the following options) SIGNIFICANTLY HIGHER / NOT SIGNIFICANTLY DIFFERENT / SIGNIFICANTLY LOWER than the national college student mean of μ = 35 (put test results in parentheses) ( z = 1.84, p > .05) . [Write closing narrative sentence to summarize the findings] There is not enough evidence in this sample to conclude that taking the herbal supplement has any effect on general fitness level; the higher average fitness score for this small sample of students might have due to chance.
  • 15. WHEN WE DO NOT KNOW THE POPULATION STANDARD DEVIATION: T-TESTS
  • 16. H0 : μ after treatment = μ before treatment HA : μ after treatment  μ before treatment
  • 17.  Use s2 to estimate σ2  Estimated standard error: s 2 n or s n sm   Estimated standard error is used as estimate of the real standard error when the value of σm is unknown.
  • 18.  The t-statistic uses the estimated standard error in place of σm M  m s t   The t statistic is used to test hypotheses about a hypothesized (unknown) or known population mean μ when the value of σ is unknown
  • 19.
  • 20.  Family of distributions, one for each value of degrees of freedom.  Approximates the shape of the normal distribution • Flatter than the normal distribution • More spread out than the normal distribution • More variability (“fatter tails”) in t distribution  Use t values instead of Normal Curve Values
  • 21.  To compute the standard deviation (variance) we computed the mean first. • Only n-1 scores in a sample are independent • Researchers call n-1 the degrees of freedom  Degrees of freedom • Noted as df • df = n-1 for a one-sample test
  • 22. 1. State the null and alternative hypotheses 2. Select an alpha level Locate the critical region using the t distribution and df 3. Calculate the t test statistic 4. Make a decision regarding H0
  • 23. df = 24 -2.064 2.064
  • 24. z-test  One sample  Population mean μ is known or hypothesized  Population standard deviation σ is known t-test  One sample  Population mean μ is known or hypothesized  Population standard deviation σ is NOT known   n n m 2 or    m M z   s n or 2 s n sm  ,  1  M  df n s t m 
  • 25.  Also: Cronk 6.2 and Atomic Learning videos
  • 26.  Select variable  Enter test value  Click OK
  • 27.
  • 28. Rejection region defined by alpha is colored in. In this test, p-value is less area than the rejection region, so we would reject H0 because the probability of getting a result this extreme or more is less than 
  • 29. Computing by hand  Find the limits of the rejection region from a table or calculator for t  If the t-statistic you compute is more extreme (larger in magnitude), then REJECT H0  Otherwise, RETAIN H0 Computing with SPSS  Use the alpha level (often .05) for comparison.  If the p-value that SPSS computes is less than the alpha, REJECT H0  Otherwise, retain H0.
  • 30. A researcher was interested to find out whether an herbal supplement had an impact on physical fitness as measured by the Marine Physical Fitness Test. The average level of physical fitness (M = 38.68, s = 9.017) of 25 college students who took the herbal supplement in the study was tested. This mean was found to be (choose the appropriate one of the following options) SIGNIFICANTLY HIGHER / NOT SIGNIFICANTLY DIFFERENT / SIGNIFICANTLY LOWER than the national college student mean of μ = 35 (put test results in parentheses) ( t = 2.041, p = .052) . [Write closing narrative sentence to summarize the findings] There is not enough evidence in this sample to conclude that taking the herbal supplement has any effect on general fitness level; the higher average fitness score for this small sample of students might have due to chance.
  • 31.  Try the analysis again with Sample 2.  How are the results the same or different?  How would we handle writing up the different results? [Hint: Cronk has two types of write-up in each section of his book]