Ch. 10 examples Part 1 – z and t Ma260notes_Sull_ch10_HypTestEx.pptx.

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Ch. 10 examples Part 1 – z and t Ma260notes_Sull_ch10_HypTestEx.pptx

Transcript of Ch. 10 examples Part 1 – z and t Ma260notes_Sull_ch10_HypTestEx.pptx.

Page 1: Ch. 10 examples Part 1 – z and t Ma260notes_Sull_ch10_HypTestEx.pptx.

Ch. 10 examplesPart 1 – z and t

Ma260notes_Sull_ch10_HypTestEx.pptx

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Test on a single population mean• Intro: So far we’ve studied estimation, or confidence

intervals, focusing on the middle 90% or 95% or 99%• Now the focus is on Hypothesis Testing (using the 1%

or 5% or 10% in the tails instead)

• As in Ch. 8 (CLT) and 9 (CI s), we’ll study both:– Means and – proportions

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Courtroom Analogy-Two Hypotheses: Guilty or Not Guilty

  Our conclusion (the sentence)

    Verdict is Not guilty Verdict is Guilty

Reality Defendant is innocent

Acquittal-                   Correct conclusion

Error

Defendant is guilty

Error Conviction-                    Correct conclusion

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Hypothesis Testing in Statistics—Note the chance of two different errors (Type I, II)

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Types of Hypotheses in Statistical Testing• The null hypothesis H0 is one which expresses the

current state of nature of belief about a population– Note: The hypothesis with the equal sign is the null

• The alternative (or research) hypothesis (H 1 or H

a ) is one which reflects the researcher’s belief. (It will always disagree with the null hypothesis).– Note: the alternative hypothesis can be one or two tailed.– In one tailed tests, the alternative is usually the claim

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Summary of Hypothesis test steps1. Null hypothesis H0, alternative hypothesis H1, and preset α

2. Test statistic and sampling distribution

3. P-value and/or critical value4. Test conclusion

5. Interpretation of test results

2-tailed exH0: µ= 100H1: µ ≠ 100α = 0.05

Left tail exH0: µ = 200H1: µ < 200α = 0.05

Right tail exH0: µ = 50H1: µ > 50α = 0.05

CV approach P value approach decisionIf test stat is in RR (Rejection Region)

If p-value ≤ α reject H0

If test stat is not in RR p-value > α do not reject H0

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Should you use a 2 tail, or a right, or left tail test?

• Test whether the average in the bag of numbers is or isn’t 100.

• Test if a drug had any effect on heart rate.• Test if a tutor helped the class do better on the

next test.• Test if a drug improved elevated cholesterol.

2-tailed exH0: µ= __H1: µ ≠ __

Left tail exH0: µ = ___H1: µ < ___

Right tail exH0: µ = __H1: µ > __

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Example #1- numbers in a bagRecall the experiments with the bags of

numbers.• I claim that µ = 100. We’ll assume =21.9. • Test this hypothesis (that µ = 100 )if your

sample size n= 20 and your sample mean was 90.

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Ex #1- Hyp Test- numbers in a bag1. H0: µ = 100

H1: µ ≠ 100

α = 0.05

2. Z = =

3. CV

4. Test conclusion

5. Interpretation of test results

CV approach P value approach decision

If test stat is in RR (Rejection Region)

If p-value ≤ α reject H0

If test stat is not in RR p-value > α do not reject H0

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Ex #2– new sample mean

• If the sample mean is 95, redo the test:1. H0: µ = 100

H1: µ ≠ 100

α = 0.05

2. Z = =

3. CV

4. Test conclusion

5. Interpretation of test results

CV approach P value approach decisionIf test stat is in RR (Rejection Region)

If p-value ≤ α reject H0

If test stat is not in RR p-value > α do not reject H0

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Ex #3: Left tail test- cholesterol

• A group has a mean cholesterol of 220. The data is normally distributed with σ= 15

• After a new drug is used, test the claim that it lowers cholesterol.

• Data: n=30, sample mean= = 214.

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Ex #3- cholesterol – left test1. H0: µ 220 (fill in the correct hypotheses here)

H1: µ 220

α = 0.05

2. Z = =

3. P-value and/or critical value

4. Test conclusion

5. Interpretation of test results

CV approach P value approach decision

If test stat is in RR (Rejection Region)

If p-value ≤ α reject H0

If test stat is not in RR p-value > α do not reject H0

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Ex #4- right tail- tutor

Scores in a MATH117 class have been normally distributed, with a mean of 60 all semester. The teacher believes that a tutor would help. After a few weeks with the tutor, a sample of 35 students’ scores is taken. The sample mean is now 62. Assume a population standard deviation of 5. Has the tutor had a positive effect?

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Ex #4: tutor1. H0: µ 60

H1: µ 60

α = 0.05

2. Z = =

3. P-value and/or critical value

4. Test conclusion

5. Interpretation of test results

CV approach P value approach decision

If test stat is in RR (Rejection Region)

If p-value ≤ α reject H0

If test stat is not in RR p-value > α do not reject H0

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When is unknown…use t tests

Just like with confidence intervals, if we do not know the population standard deviation, we– substitute it with s (the sample standard

deviation) and– Run a t test instead of a z test

First, we’ll review using the t table

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Critical values for t• Find the CV for RIGHT tail examples when:

– n=10, = .05– n=15, = .10

• Find the CV for LEFT tail examples when:– n=10, = .05– n=15, = .10

• Find the CV for TWO tail examples when:– n=10, = .05– n=15, = .10– n=20, = .01

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Ex #5– t test – placement scores

The placement director states that the average placement score is 75. Based on the following data, test this claim.

• Data: 42 88 99 51 57 78 92 46 57

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Ex #5 t test – placement scores

1. H0: µ 75

H1: µ 75α = 0.05

2. t = =

3. P-value and/or critical value4. Test conclusion

5. Interpretation of test results

6. Confidence Interval

CV approach P value approach decision

If test stat is in RR If p-value ≤ α reject H0

If test stat is not in RR p-value > α do not reject H0

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Ex #6- placement scores

The head of the tutoring department claims that the average placement score is below 80. Based on the following data, test this claim.

• Data: 42 88 99 51 57 78 92 46 57

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Note: P values for t-tests

• We can use the t-table to approximate these values

• Use “Stat Crunch” on the online-hw to get more exact answers. – See the rectangle to the right of the data

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Ex #6– t example

1. H0: µ 80 (fill in the correct hypotheses here)

H1: µ 80α = 0.05

2. t = =

3. P-value and/or critical value

4. Test conclusion

5. Interpretation of test results

CV approach P value approach decision

If test stat is in RR (Rejection Region)

If p-value ≤ α reject H0

If test stat is not in RR

p-value > α do not reject H0

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Ex #7- salaries– t

A national study shows that nurses earn $40,000. A career director claims that salaries in her town are higher than the national average. A sample provides the following data:

41,000 42,500 39,000 39,99943,000 43,550 44,200

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Ex #7- salaries

1. H0: µ 40000 (fill in the correct hypotheses here)

H1: µ 40000α = 0.05

2. t = =

3. P-value and/or critical value

4. Test conclusion

5. Interpretation of test results

CV approach P value approach decision

If test stat is in RR (Rejection Region)

If p-value ≤ α reject H0

If test stat is not in RR

p-value > α do not reject H0

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The Hypothesis Testing templateAlthough hw may be worded differently, questions on the test will

require you to do a 5 or 6 step answer (using either p value or CV)

1. Null and alternative hypotheses, H0 and H1, and preset α

2. Test statistic z = or t =3. P-value and/or critical value

4. Test conclusion– Reject H0 or notIf test value is in RR (p-value ≤ α), we reject H0.

If test value is not in RR (p-value > α), we do not reject H0

5. Interpretation of test results6. Confidence Interval (for 2 tailed problems)

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Ch.10 – part twoTesting Proportion p

• Recall confidence intervals for p:

• ± z

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Hypothesis tests for proportions1. Null hypothesis H0, alternative hypothesis H1, and preset α

2. Sampling distribution Test statistic z =

3. P-value and/or critical value

4. Test conclusion

5. Interpretation of test results

2-tailed exH0: p= .5H1: p ≠ .5α = 0.05

Left tail exH0: p = .7H1: p < .7α = 0.05

Right tail exH0: p = .2H1: p > .2α = 0.05

CV approach P value approach decisionIf test stat is in RR (Rejection Region)

If p-value ≤ α reject H0

If test stat is not in RR p-value > α do not reject H0

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Ex #8- proportion who like job

• The HR director at a large corporation estimates that 75% of employees enjoy their jobs. From a sample of 200 people, 142 answer that they do. Test the HR director’s claim.

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Ex #81. Null hypothesis H0, alternative hypothesis H1, and preset α

H0: p=.75

H1: p

α = 2. Test statistic and sampling distribution

Z = =

3. P-value and/or critical value4. Test conclusion

5. Interpretation of test results6. Confidence interval

CV approach P value approach decisionIf test stat is in RR (Rejection Region)

If p-value ≤ α reject H0

If test stat is not in RR p-value > α do not reject H0

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Ex #9

Previous studies show that 29% of eligible voters vote in the mid-terms. News pundits estimate that turnout will be lower than usual. A random sample of 800 adults reveals that 200 planned to vote in the mid-term elections. At the 1% level, test the news pundits’ predictions.

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Ex #91. Null hypothesis H0, alternative hypothesis H1, and preset α

H0: p (fill in hypothesis)

H1: p

α = 2. Test statistic and sampling distribution

Z = =

3. P-value and/or critical value4. Test conclusion

5. Interpretation of test results6. Confidence Interval

CV approach P value approach decisionIf test stat is in RR (Rejection Region)

If p-value ≤ α reject H0

If test stat is not in RR p-value > α do not reject H0